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02d1d628
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1/* quant.c - provides general image quantization
2 currently only used by gif.c, but maybe we'll support producing
3 8-bit (or bigger indexed) png files at some point
4*/
92bda632 5#include "imager.h"
50c75381 6#include "imageri.h"
02d1d628 7
59c150a4 8static void makemap_webmap(i_quantize *);
02d1d628 9static void makemap_addi(i_quantize *, i_img **imgs, int count);
97c4effc 10static void makemap_mediancut(i_quantize *, i_img **imgs, int count);
9c106321 11static void makemap_mono(i_quantize *);
5e9a7fbd 12static void makemap_gray(i_quantize *, int step);
02d1d628 13
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14static int makemap_palette(i_quantize *, i_img **imgs, int count);
15
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16static
17void
18setcol(i_color *cl,unsigned char r,unsigned char g,unsigned char b,unsigned char a) {
19 cl->rgba.r=r;
20 cl->rgba.g=g;
21 cl->rgba.b=b;
22 cl->rgba.a=a;
23}
24
25
26
27/* make a colour map overwrites mc_existing/mc_count in quant Note
28 that i_makemap will be called once for each image if mc_perimage is
29 set and the format support multiple colour maps per image.
30
31 This means we don't need any special processing at this level to
32 handle multiple colour maps.
33*/
34
92bda632 35/*
5715f7c3 36=item i_quant_makemap(C<quant>, C<imgs>, C<count>)
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37
38=category Image quantization
39
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40Analyzes the C<count> images in C<imgs> according to the rules in
41C<quant> to build a color map (optimal or not depending on
42C<< quant->make_colors >>).
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43
44=cut
45*/
46
02d1d628 47void
92bda632 48i_quant_makemap(i_quantize *quant, i_img **imgs, int count) {
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49
50 if (quant->translate == pt_giflib) {
51 /* giflib does it's own color table generation */
52 /* previously we used giflib's quantizer, but it didn't handle multiple
53 images, which made it hard to build a global color map
54 We've implemented our own median cut code so we can ignore
55 the giflib version */
56 makemap_mediancut(quant, imgs, count);
02d1d628 57 return;
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58 }
59
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60 switch (quant->make_colors & mc_mask) {
61 case mc_none:
62 /* use user's specified map */
63 break;
64 case mc_web_map:
59c150a4 65 makemap_webmap(quant);
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66 break;
67
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68 case mc_median_cut:
69 makemap_mediancut(quant, imgs, count);
70 break;
71
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72 case mc_mono:
73 makemap_mono(quant);
74 break;
75
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76 case mc_gray:
77 makemap_gray(quant, 1);
78 break;
79
80 case mc_gray4:
81 makemap_gray(quant, 85);
82 break;
83
84 case mc_gray16:
85 makemap_gray(quant, 17);
86 break;
87
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88 case mc_addi:
89 default:
90 makemap_addi(quant, imgs, count);
91 break;
92 }
93}
94
02d1d628 95static void translate_closest(i_quantize *, i_img *, i_palidx *);
a3b721bb 96static int translate_errdiff(i_quantize *, i_img *, i_palidx *);
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97static void translate_addi(i_quantize *, i_img *, i_palidx *);
98
92bda632 99/*
5715f7c3 100=item i_quant_translate(C<quant>, C<img>)
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101
102=category Image quantization
103
5715f7c3 104Quantize the image given the palette in C<quant>.
92bda632 105
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106On success returns a pointer to a memory block of C<< img->xsize *
107img->ysize >> C<i_palidx> entries.
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108
109On failure returns NULL.
02d1d628 110
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111You should call myfree() on the returned block when you're done with
112it.
113
114This function will fail if the supplied palette contains no colors.
115
116=cut
02d1d628 117*/
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118i_palidx *
119i_quant_translate(i_quantize *quant, i_img *img) {
2ff8ed30 120 i_palidx *result;
8d14daab 121 size_t bytes;
f771d0ec 122
a73aeb5f 123 mm_log((1, "quant_translate(quant %p, img %p)\n", quant, img));
2ff8ed30 124
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125 /* there must be at least one color in the paletted (though even that
126 isn't very useful */
127 if (quant->mc_count == 0) {
128 i_push_error(0, "no colors available for translation");
129 return NULL;
130 }
131
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132 bytes = img->xsize * img->ysize;
133 if (bytes / img->ysize != img->xsize) {
134 i_push_error(0, "integer overflow calculating memory allocation");
135 return NULL;
136 }
137 result = mymalloc(bytes);
2ff8ed30 138
02d1d628 139 switch (quant->translate) {
02d1d628 140 case pt_closest:
97c4effc 141 case pt_giflib:
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142 translate_closest(quant, img, result);
143 break;
a73aeb5f 144
02d1d628 145 case pt_errdiff:
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146 if (!translate_errdiff(quant, img, result)) {
147 myfree(result);
148 return NULL;
149 }
02d1d628 150 break;
a73aeb5f 151
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152 case pt_perturb:
153 default:
154 translate_addi(quant, img, result);
155 break;
156 }
a73aeb5f 157
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158 return result;
159}
160
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161static void translate_closest(i_quantize *quant, i_img *img, i_palidx *out) {
162 quant->perturb = 0;
163 translate_addi(quant, img, out);
164}
165
166#define PWR2(x) ((x)*(x))
167
168typedef int (*cmpfunc)(const void*, const void*);
169
170typedef struct {
171 unsigned char r,g,b;
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172 char fixed;
173 char used;
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174 int dr,dg,db;
175 int cdist;
176 int mcount;
177} cvec;
178
179typedef struct {
180 int cnt;
181 int vec[256];
182} hashbox;
183
184typedef struct {
185 int boxnum;
186 int pixcnt;
187 int cand;
188 int pdc;
189} pbox;
190
18accb2a 191static void prescan(i_img **im,int count, int cnum, cvec *clr, i_sample_t *line);
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192static void reorder(pbox prescan[512]);
193static int pboxcmp(const pbox *a,const pbox *b);
194static void boxcenter(int box,cvec *cv);
195static float frandn(void);
196static void boxrand(int box,cvec *cv);
197static void bbox(int box,int *r0,int *r1,int *g0,int *g1,int *b0,int *b1);
198static void cr_hashindex(cvec clr[256],int cnum,hashbox hb[512]);
199static int mindist(int boxnum,cvec *cv);
200static int maxdist(int boxnum,cvec *cv);
201
202/* Some of the simpler functions are kept here to aid the compiler -
203 maybe some of them will be inlined. */
204
205static int
206pixbox(i_color *ic) { return ((ic->channel[0] & 224)<<1)+ ((ic->channel[1]&224)>>2) + ((ic->channel[2] &224) >> 5); }
207
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208static int
209pixbox_ch(i_sample_t *chans) { return ((chans[0] & 224)<<1)+ ((chans[1]&224)>>2) + ((chans[2] &224) >> 5); }
210
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211static unsigned char
212g_sat(int in) {
213 if (in>255) { return 255; }
214 else if (in>0) return in;
215 return 0;
216}
217
218static
219float
220frand(void) {
221 return rand()/(RAND_MAX+1.0);
222}
223
a659442a 224#ifdef NOTEF
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225static
226int
227eucl_d(cvec* cv,i_color *cl) { return PWR2(cv->r-cl->channel[0])+PWR2(cv->g-cl->channel[1])+PWR2(cv->b-cl->channel[2]); }
a659442a 228#endif
02d1d628 229
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230static
231int
232eucl_d_ch(cvec* cv,i_sample_t *chans) {
233 return PWR2(cv->r - chans[0]) + PWR2(cv->g - chans[1])
234 + PWR2(cv->b - chans[2]);
235}
236
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237static int
238ceucl_d(i_color *c1, i_color *c2) {
239return PWR2(c1->channel[0]-c2->channel[0])
240 +PWR2(c1->channel[1]-c2->channel[1])
241 +PWR2(c1->channel[2]-c2->channel[2]);
242}
02d1d628 243
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244static const int
245gray_samples[] = { 0, 0, 0 };
246
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247/*
248
249This quantization algorithm and implementation routines are by Arnar
250M. Hrafnkelson. In case any new ideas are here they are mine since
251this was written from scratch.
252
253The algorithm uses local means in the following way:
254
255 For each point in the colormap we find which image points
256 have that point as it's closest point. We calculate the mean
257 of those points and in the next iteration it will be the new
258 entry in the colormap.
259
260In order to speed this process up (i.e. nearest neighbor problem) We
261divied the r,g,b space up in equally large 512 boxes. The boxes are
262numbered from 0 to 511. Their numbering is so that for a given vector
263it is known that it belongs to the box who is formed by concatenating the
2643 most significant bits from each component of the RGB triplet.
265
266For each box we find the list of points from the colormap who might be
267closest to any given point within the box. The exact solution
268involves finding the Voronoi map (or the dual the Delauny
269triangulation) and has many issues including numerical stability.
270
271So we use this approximation:
272
2731. Find which point has the shortest maximum distance to the box.
2742. Find all points that have a shorter minimum distance than that to the box
275
276This is a very simple task and is not computationally heavy if one
277takes into account that the minimum distances from a pixel to a box is
278always found by checking if it's inside the box or is closest to some
279side or a corner. Finding the maximum distance is also either a side
280or a corner.
281
282This approach results 2-3 times more than the actual points needed but
283is still a good gain over the complete space. Usually when one has a
284256 Colorcolor map a search over 30 is often obtained.
285
286A bit of an enhancement to this approach is to keep a seperate list
287for each side of the cube, but this will require even more memory.
288
289 Arnar M. Hrafnkelsson (addi@umich.edu);
290
291*/
292/*
293 Extracted from gifquant.c, removed dependencies on gif_lib,
294 and added support for multiple images.
295 starting from 1nov2000 by TonyC <tony@develop-help.com>.
296
297*/
298
299static void
300makemap_addi(i_quantize *quant, i_img **imgs, int count) {
301 cvec *clr;
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302 int cnum, i, bst_idx=0, ld, cd, iter, currhb, img_num;
303 i_img_dim x, y;
18accb2a 304 i_sample_t *val;
02d1d628 305 float dlt, accerr;
9cfd5724 306 hashbox *hb;
18accb2a 307 i_mempool mp;
8d14daab 308 i_img_dim maxwidth = 0;
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309 i_sample_t *line;
310 const int *sample_indices;
02d1d628 311
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312 mm_log((1, "makemap_addi(quant %p { mc_count=%d, mc_colors=%p }, imgs %p, count %d)\n",
313 quant, quant->mc_count, quant->mc_colors, imgs, count));
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314
315 if (makemap_palette(quant, imgs, count))
316 return;
7ac6a2e9 317
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318 i_mempool_init(&mp);
319
320 clr = i_mempool_alloc(&mp, sizeof(cvec) * quant->mc_size);
321 hb = i_mempool_alloc(&mp, sizeof(hashbox) * 512);
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322 for (i=0; i < quant->mc_count; ++i) {
323 clr[i].r = quant->mc_colors[i].rgb.r;
324 clr[i].g = quant->mc_colors[i].rgb.g;
325 clr[i].b = quant->mc_colors[i].rgb.b;
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326 clr[i].fixed = 1;
327 clr[i].mcount = 0;
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328 }
329 /* mymalloc doesn't clear memory, so I think we need this */
330 for (; i < quant->mc_size; ++i) {
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331 /*clr[i].r = clr[i].g = clr[i].b = 0;*/
332 clr[i].dr = 0;
333 clr[i].dg = 0;
334 clr[i].db = 0;
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335 clr[i].fixed = 0;
336 clr[i].mcount = 0;
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337 }
338 cnum = quant->mc_size;
339 dlt = 1;
340
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341 for (img_num = 0; img_num < count; ++img_num) {
342 if (imgs[img_num]->xsize > maxwidth)
343 maxwidth = imgs[img_num]->xsize;
344 }
345 line = i_mempool_alloc(&mp, 3 * maxwidth * sizeof(*line));
346
347 prescan(imgs, count, cnum, clr, line);
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348 cr_hashindex(clr, cnum, hb);
349
350 for(iter=0;iter<3;iter++) {
351 accerr=0.0;
352
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353 for (img_num = 0; img_num < count; ++img_num) {
354 i_img *im = imgs[img_num];
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355 sample_indices = im->channels >= 3 ? NULL : gray_samples;
356 for(y=0;y<im->ysize;y++) {
357 i_gsamp(im, 0, im->xsize, y, line, sample_indices, 3);
358 val = line;
359 for(x=0;x<im->xsize;x++) {
360 ld=196608;
361 /*i_gpix(im,x,y,&val);*/
362 currhb=pixbox_ch(val);
363 /* printf("box = %d \n",currhb); */
364 for(i=0;i<hb[currhb].cnt;i++) {
365 /* printf("comparing: pix (%d,%d,%d) vec (%d,%d,%d)\n",val.channel[0],val.channel[1],val.channel[2],clr[hb[currhb].vec[i]].r,clr[hb[currhb].vec[i]].g,clr[hb[currhb].vec[i]].b); */
366
367 cd=eucl_d_ch(&clr[hb[currhb].vec[i]],val);
368 if (cd<ld) {
369 ld=cd; /* shortest distance yet */
370 bst_idx=hb[currhb].vec[i]; /* index of closest vector yet */
371 }
372 }
373
374 clr[bst_idx].mcount++;
375 accerr+=(ld);
376 clr[bst_idx].dr+=val[0];
377 clr[bst_idx].dg+=val[1];
378 clr[bst_idx].db+=val[2];
379
380 val += 3; /* next 3 samples (next pixel) */
381 }
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382 }
383 }
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384
385 for(i=0;i<cnum;i++)
386 if (clr[i].mcount) {
387 clr[i].dr/=clr[i].mcount;
388 clr[i].dg/=clr[i].mcount;
389 clr[i].db/=clr[i].mcount;
390 }
391
02d1d628 392 /* for(i=0;i<cnum;i++) printf("vec(%d)=(%d,%d,%d) dest=(%d,%d,%d) matchcount=%d\n",
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393 i,clr[i].r,clr[i].g,clr[i].b,clr[i].dr,clr[i].dg,clr[i].db,clr[i].mcount); */
394
02d1d628 395 /* printf("total error: %.2f\n",sqrt(accerr)); */
18accb2a 396
02d1d628 397 for(i=0;i<cnum;i++) {
36e67d0b 398 if (clr[i].fixed) continue; /* skip reserved colors */
18accb2a 399
02d1d628 400 if (clr[i].mcount) {
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401 clr[i].used = 1;
402 clr[i].r=clr[i].r*(1-dlt)+dlt*clr[i].dr;
403 clr[i].g=clr[i].g*(1-dlt)+dlt*clr[i].dg;
404 clr[i].b=clr[i].b*(1-dlt)+dlt*clr[i].db;
02d1d628 405 } else {
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406 /* let's try something else */
407 clr[i].used = 0;
408 clr[i].r=rand();
409 clr[i].g=rand();
410 clr[i].b=rand();
02d1d628 411 }
18accb2a 412
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413 clr[i].dr=0;
414 clr[i].dg=0;
415 clr[i].db=0;
416 clr[i].mcount=0;
417 }
418 cr_hashindex(clr,cnum,hb);
419 }
420
421
422#ifdef NOTEF
423 for(i=0;i<cnum;i++) {
424 cd=eucl_d(&clr[i],&val);
425 if (cd<ld) {
426 ld=cd;
427 bst_idx=i;
428 }
429 }
430#endif
431
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432 /* if defined, we only include colours with an mcount or that were
433 supplied in the fixed palette, giving us a smaller output palette */
434#define ONLY_USE_USED
435#ifdef ONLY_USE_USED
436 /* transfer the colors back */
437 quant->mc_count = 0;
438 for (i = 0; i < cnum; ++i) {
439 if (clr[i].fixed || clr[i].used) {
440 /*printf("Adding %d (%d,%d,%d)\n", i, clr[i].r, clr[i].g, clr[i].b);*/
441 quant->mc_colors[quant->mc_count].rgb.r = clr[i].r;
442 quant->mc_colors[quant->mc_count].rgb.g = clr[i].g;
443 quant->mc_colors[quant->mc_count].rgb.b = clr[i].b;
444 ++quant->mc_count;
445 }
446 }
447#else
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448 /* transfer the colors back */
449 for (i = 0; i < cnum; ++i) {
450 quant->mc_colors[i].rgb.r = clr[i].r;
451 quant->mc_colors[i].rgb.g = clr[i].g;
452 quant->mc_colors[i].rgb.b = clr[i].b;
453 }
454 quant->mc_count = cnum;
36e67d0b 455#endif
02d1d628 456
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457#if 0
458 mm_log((1, "makemap_addi returns - quant.mc_count = %d\n", quant->mc_count));
459 for (i = 0; i < quant->mc_count; ++i)
460 mm_log((5, " map entry %d: (%d, %d, %d)\n", i, clr[i].r, clr[i].g, clr[i].b));
461#endif
462
18accb2a 463 i_mempool_destroy(&mp);
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464
465 mm_log((1, "makemap_addi() - %d colors\n", quant->mc_count));
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466}
467
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468typedef struct {
469 i_sample_t rgb[3];
470 int count;
471} quant_color_entry;
472
473#define MEDIAN_CUT_COLORS 32768
474
475#define MED_CUT_INDEX(c) ((((c).rgb.r & 0xF8) << 7) | \
476 (((c).rgb.g & 0xF8) << 2) | (((c).rgb.b & 0xF8) >> 3))
477
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478#define MED_CUT_GRAY_INDEX(c) ((((c).rgb.r & 0xF8) << 7) | \
479 (((c).rgb.r & 0xF8) << 2) | (((c).rgb.r & 0xF8) >> 3))
480
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481/* scale these to cover the whole range */
482#define MED_CUT_RED(index) ((((index) & 0x7C00) >> 10) * 255 / 31)
483#define MED_CUT_GREEN(index) ((((index) & 0x3E0) >> 5) * 255 / 31)
484#define MED_CUT_BLUE(index) (((index) & 0x1F) * 255 / 31)
485
486typedef struct {
487 i_sample_t min[3]; /* minimum for each channel */
488 i_sample_t max[3]; /* maximum for each channel */
489 i_sample_t width[3]; /* width for each channel */
490 int start, size; /* beginning and size of the partition */
8d14daab 491 i_img_dim pixels; /* number of pixels represented by this partition */
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492} medcut_partition;
493
494/*
495=item calc_part(part, colors)
496
497Calculates the new color limits for the given partition.
498
499Giflib assumes that the limits for the non-split channels stay the
500same, but this strikes me as incorrect, especially if the colors tend
501to be color ramps.
502
503Of course this could be optimized by not recalculating the channel we
504just sorted on, but it's not worth the effort right now.
505
506=cut
507*/
508static void calc_part(medcut_partition *part, quant_color_entry *colors) {
509 int i, ch;
510
511 for (ch = 0; ch < 3; ++ch) {
512 part->min[ch] = 255;
513 part->max[ch] = 0;
514 }
515 for (i = part->start; i < part->start + part->size; ++i) {
516 for (ch = 0; ch < 3; ++ch) {
517 if (part->min[ch] > colors[i].rgb[ch])
518 part->min[ch] = colors[i].rgb[ch];
519 if (part->max[ch] < colors[i].rgb[ch])
520 part->max[ch] = colors[i].rgb[ch];
521 }
522 }
523 for (ch = 0; ch < 3; ++ch) {
524 part->width[ch] = part->max[ch] - part->min[ch];
525 }
526}
527
528/* simple functions to sort by each channel - we could use a global, but
529 that would be bad */
530
531static int
532color_sort_red(void const *left, void const *right) {
533 return ((quant_color_entry *)left)->rgb[0] - ((quant_color_entry *)right)->rgb[0];
534}
535
536static int
537color_sort_green(void const *left, void const *right) {
538 return ((quant_color_entry *)left)->rgb[1] - ((quant_color_entry *)right)->rgb[1];
539}
540
541static int
542color_sort_blue(void const *left, void const *right) {
543 return ((quant_color_entry *)left)->rgb[2] - ((quant_color_entry *)right)->rgb[2];
544}
545
546static int (*sorters[])(void const *, void const *) =
547{
548 color_sort_red,
549 color_sort_green,
550 color_sort_blue,
551};
552
553static void
554makemap_mediancut(i_quantize *quant, i_img **imgs, int count) {
555 quant_color_entry *colors;
556 i_mempool mp;
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557 int imgn, i, ch;
558 i_img_dim x, y, max_width;
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559 i_color *line;
560 int color_count;
8d14daab 561 i_img_dim total_pixels;
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562 medcut_partition *parts;
563 int part_num;
564 int in, out;
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565 /* number of channels we search for the best channel to partition
566 this isn't terribly efficient, but it should work */
567 int chan_count;
97c4effc 568
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569 mm_log((1, "makemap_mediancut(quant %p { mc_count=%d, mc_colors=%p }, imgs %p, count %d)\n",
570 quant, quant->mc_count, quant->mc_colors, imgs, count));
571
572 if (makemap_palette(quant, imgs, count))
573 return;
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TC
574
575 i_mempool_init(&mp);
576
577 colors = i_mempool_alloc(&mp, sizeof(*colors) * MEDIAN_CUT_COLORS);
578 for (i = 0; i < MEDIAN_CUT_COLORS; ++i) {
579 colors[i].rgb[0] = MED_CUT_RED(i);
580 colors[i].rgb[1] = MED_CUT_GREEN(i);
581 colors[i].rgb[2] = MED_CUT_BLUE(i);
582 colors[i].count = 0;
583 }
584
585 max_width = -1;
586 for (imgn = 0; imgn < count; ++imgn) {
587 if (imgs[imgn]->xsize > max_width)
588 max_width = imgs[imgn]->xsize;
589 }
590 line = i_mempool_alloc(&mp, sizeof(i_color) * max_width);
591
592 /* build the stats */
593 total_pixels = 0;
18accb2a 594 chan_count = 1; /* assume we just have grayscale */
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595 for (imgn = 0; imgn < count; ++imgn) {
596 total_pixels += imgs[imgn]->xsize * imgs[imgn]->ysize;
597 for (y = 0; y < imgs[imgn]->ysize; ++y) {
598 i_glin(imgs[imgn], 0, imgs[imgn]->xsize, y, line);
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599 if (imgs[imgn]->channels > 2) {
600 chan_count = 3;
601 for (x = 0; x < imgs[imgn]->xsize; ++x) {
602 ++colors[MED_CUT_INDEX(line[x])].count;
603 }
604 }
605 else {
606 /* a gray-scale image, just use the first channel */
607 for (x = 0; x < imgs[imgn]->xsize; ++x) {
608 ++colors[MED_CUT_GRAY_INDEX(line[x])].count;
609 }
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610 }
611 }
612 }
613
614 /* eliminate the empty colors */
615 out = 0;
616 for (in = 0; in < MEDIAN_CUT_COLORS; ++in) {
617 if (colors[in].count) {
618 colors[out++] = colors[in];
619 }
620 }
621 /*printf("out %d\n", out);
622
623 for (i = 0; i < out; ++i) {
624 if (colors[i].count) {
625 printf("%d: (%d,%d,%d) -> %d\n", i, colors[i].rgb[0], colors[i].rgb[1],
626 colors[i].rgb[2], colors[i].count);
627 }
628 }*/
629
630 if (out < quant->mc_size) {
631 /* just copy them into the color table */
632 for (i = 0; i < out; ++i) {
633 for (ch = 0; ch < 3; ++ch) {
634 quant->mc_colors[i].channel[ch] = colors[i].rgb[ch];
635 }
636 }
637 quant->mc_count = out;
638 }
639 else {
640 /* build the starting partition */
641 parts = i_mempool_alloc(&mp, sizeof(*parts) * quant->mc_size);
642 parts[0].start = 0;
643 parts[0].size = out;
644 parts[0].pixels = total_pixels;
645 calc_part(parts, colors);
646 color_count = 1;
647
648 while (color_count < quant->mc_size) {
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649 /* initialized to avoid compiler warnings */
650 int max_index = 0, max_ch = 0; /* index/channel with biggest spread */
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651 int max_size;
652 medcut_partition *workpart;
653 int cum_total;
654 int half;
655
656 /* find the partition with the most biggest span with more than
657 one color */
658 max_size = -1;
659 for (i = 0; i < color_count; ++i) {
18accb2a 660 for (ch = 0; ch < chan_count; ++ch) {
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661 if (parts[i].width[ch] > max_size
662 && parts[i].size > 1) {
663 max_index = i;
664 max_ch = ch;
665 max_size = parts[i].width[ch];
666 }
667 }
668 }
669
670 /* nothing else we can split */
671 if (max_size == -1)
672 break;
673
674 workpart = parts+max_index;
675 /*printf("splitting partition %d (pixels %ld, start %d, size %d)\n", max_index, workpart->pixels, workpart->start, workpart->size);*/
676 qsort(colors + workpart->start, workpart->size, sizeof(*colors),
677 sorters[max_ch]);
678
679 /* find the median or something like it we need to make sure both
680 sides of the split have at least one color in them, so we don't
681 test at the first or last entry */
682 i = workpart->start;
683 cum_total = colors[i].count;
684 ++i;
685 half = workpart->pixels / 2;
686 while (i < workpart->start + workpart->size - 1
687 && cum_total < half) {
688 cum_total += colors[i++].count;
689 }
690 /*printf("Split at %d to make %d (half %ld, cumtotal %ld)\n", i, color_count, half, cum_total);*/
691
692 /* found the spot to split */
693 parts[color_count].start = i;
694 parts[color_count].size = workpart->start + workpart->size - i;
695 workpart->size = i - workpart->start;
696 parts[color_count].pixels = workpart->pixels - cum_total;
697 workpart->pixels = cum_total;
698
699 /* recalculate the limits */
700 calc_part(workpart, colors);
701 calc_part(parts+color_count, colors);
702 ++color_count;
703 }
704
705 /* fill in the color table - since we could still have partitions
706 that have more than one color, we need to average the colors */
707 for (part_num = 0; part_num < color_count; ++part_num) {
708 long sums[3];
709 medcut_partition *workpart;
710
711 workpart = parts+part_num;
712 for (ch = 0; ch < 3; ++ch)
713 sums[ch] = 0;
714
715 for (i = workpart->start; i < workpart->start + workpart->size; ++i) {
716 for (ch = 0; ch < 3; ++ch) {
717 sums[ch] += colors[i].rgb[ch] * colors[i].count;
718 }
719 }
720 for (ch = 0; ch < 3; ++ch) {
721 quant->mc_colors[part_num].channel[ch] = sums[ch] / workpart->pixels;
722 }
723 }
724 quant->mc_count = color_count;
725 }
726 /*printf("out %d colors\n", quant->mc_count);*/
727 i_mempool_destroy(&mp);
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728
729 mm_log((1, "makemap_mediancut() - %d colors\n", quant->mc_count));
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730}
731
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732static void
733makemap_mono(i_quantize *quant) {
734 quant->mc_colors[0].rgba.r = 0;
735 quant->mc_colors[0].rgba.g = 0;
736 quant->mc_colors[0].rgba.b = 0;
737 quant->mc_colors[0].rgba.a = 255;
738 quant->mc_colors[1].rgba.r = 255;
739 quant->mc_colors[1].rgba.g = 255;
740 quant->mc_colors[1].rgba.b = 255;
741 quant->mc_colors[1].rgba.a = 255;
742 quant->mc_count = 2;
743}
744
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745static void
746makemap_gray(i_quantize *quant, int step) {
747 int gray = 0;
748 int i = 0;
749
750 while (gray < 256) {
751 setcol(quant->mc_colors+i, gray, gray, gray, 255);
752 ++i;
753 gray += step;
754 }
755 quant->mc_count = i;
756}
757
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758static void
759makemap_webmap(i_quantize *quant) {
760 int r, g, b;
761
762 int i = 0;
763 for (r = 0; r < 256; r+=0x33)
764 for (g = 0; g < 256; g+=0x33)
765 for (b = 0; b < 256; b += 0x33)
766 setcol(quant->mc_colors+i++, r, g, b, 255);
767 quant->mc_count = i;
768}
769
770static int
771in_palette(i_color *c, i_quantize *quant, int size) {
772 int i;
773
774 for (i = 0; i < size; ++i) {
775 if (c->channel[0] == quant->mc_colors[i].channel[0]
776 && c->channel[1] == quant->mc_colors[i].channel[1]
777 && c->channel[2] == quant->mc_colors[i].channel[2]) {
778 return i;
779 }
780 }
781
782 return -1;
783}
784
785/*
786=item makemap_palette(quant, imgs, count)
787
788Tests if all the given images are paletted and have a common palette,
789if they do it builds that palette.
790
791A possible improvement might be to eliminate unused colors in the
792images palettes.
793
794=cut
795*/
796
797static int
798makemap_palette(i_quantize *quant, i_img **imgs, int count) {
799 int size = quant->mc_count;
800 int i;
801 int imgn;
802 char used[256];
803 int col_count;
804
805 mm_log((1, "makemap_palette(quant %p { mc_count=%d, mc_colors=%p }, imgs %p, count %d)\n",
806 quant, quant->mc_count, quant->mc_colors, imgs, count));
807 /* we try to build a common palette here, if we can manage that, then
808 that's the palette we use */
809 for (imgn = 0; imgn < count; ++imgn) {
810 int eliminate_unused;
811 if (imgs[imgn]->type != i_palette_type) {
812 mm_log((1, "makemap_palette() -> 0 (non-palette image)\n"));
813 return 0;
814 }
815
816 if (!i_tags_get_int(&imgs[imgn]->tags, "gif_eliminate_unused", 0,
817 &eliminate_unused)) {
818 eliminate_unused = 1;
819 }
820
821 if (eliminate_unused) {
822 i_palidx *line = mymalloc(sizeof(i_palidx) * imgs[imgn]->xsize);
8d14daab 823 i_img_dim x, y;
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824 memset(used, 0, sizeof(used));
825
826 for (y = 0; y < imgs[imgn]->ysize; ++y) {
827 i_gpal(imgs[imgn], 0, imgs[imgn]->xsize, y, line);
828 for (x = 0; x < imgs[imgn]->xsize; ++x)
829 used[line[x]] = 1;
830 }
831
832 myfree(line);
833 }
834 else {
835 /* assume all are in use */
836 memset(used, 1, sizeof(used));
837 }
838
839 col_count = i_colorcount(imgs[imgn]);
840 for (i = 0; i < col_count; ++i) {
841 i_color c;
842
843 i_getcolors(imgs[imgn], i, &c, 1);
844 if (used[i]) {
845 if (in_palette(&c, quant, size) < 0) {
846 if (size < quant->mc_size) {
847 quant->mc_colors[size++] = c;
848 }
849 else {
850 mm_log((1, "makemap_palette() -> 0 (too many colors)\n"));
851 return 0;
852 }
853 }
854 }
855 }
856 }
857
858 mm_log((1, "makemap_palette() -> 1 (%d total colors)\n", size));
859 quant->mc_count = size;
860
861 return 1;
862}
863
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864#define pboxjump 32
865
866/* Define one of the following 4 symbols to choose a colour search method
867 The idea is to try these out, including benchmarking, to see which
868 is fastest in a good spread of circumstances.
869 I'd expect IM_CFLINSEARCH to be fastest for very small palettes, and
870 IM_CFHASHBOX for large images with large palettes.
871
872 Some other possibilities include:
873 - search over entries sorted by luminance
874
875 Initially I was planning on testing using the macros and then
876 integrating the code directly into each function, but this means if
877 we find a bug at a late stage we will need to update N copies of
878 the same code. Also, keeping the code in the macros means that the
879 code in the translation functions is much more to the point,
880 there's no distracting colour search code to remove attention from
881 what makes _this_ translation function different. It may be
882 advisable to move the setup code into functions at some point, but
883 it should be possible to do this fairly transparently.
884
885 If IM_CF_COPTS is defined then CFLAGS must have an appropriate
886 definition.
887
888 Each option needs to define 4 macros:
889 CF_VARS - variables to define in the function
890 CF_SETUP - code to setup for the colour search, eg. allocating and
891 initializing lookup tables
892 CF_FIND - code that looks for the color in val and puts the best
893 matching index in bst_idx
894 CF_CLEANUP - code to clean up, eg. releasing memory
895*/
896#ifndef IM_CF_COPTS
897/*#define IM_CFLINSEARCH*/
898#define IM_CFHASHBOX
899/*#define IM_CFSORTCHAN*/
900/*#define IM_CFRAND2DIST*/
901#endif
902
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903/* return true if the color map contains only grays */
904static int
905is_gray_map(const i_quantize *quant) {
906 int i;
907
908 for (i = 0; i < quant->mc_count; ++i) {
909 if (quant->mc_colors[i].rgb.r != quant->mc_colors[i].rgb.g
910 || quant->mc_colors[i].rgb.r != quant->mc_colors[i].rgb.b) {
911 mm_log((1, " not a gray map\n"));
912 return 0;
913 }
914 }
915
916 mm_log((1, " is a gray map\n"));
917 return 1;
918}
919
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920#ifdef IM_CFHASHBOX
921
922/* The original version I wrote for this used the sort.
923 If this is defined then we use a sort to extract the indices for
924 the hashbox */
925#define HB_SORT
926
927/* assume i is available */
9cfd5724 928#define CF_VARS hashbox *hb = mymalloc(sizeof(hashbox) * 512); \
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929 int currhb; \
930 long ld, cd
931
932#ifdef HB_SORT
933
934static long *gdists; /* qsort is annoying */
935/* int might be smaller than long, so we need to do a real compare
936 rather than a subtraction*/
937static int distcomp(void const *a, void const *b) {
938 long ra = gdists[*(int const *)a];
939 long rb = gdists[*(int const *)b];
940 if (ra < rb)
941 return -1;
942 else if (ra > rb)
943 return 1;
944 else
945 return 0;
946}
947
948#endif
949
950/* for each hashbox build a list of colours that are in the hb or is closer
951 than other colours
952 This is pretty involved. The original gifquant generated the hashbox
953 as part of it's normal processing, but since the map generation is now
954 separated from the translation we need to do this on the spot.
955 Any optimizations, even if they don't produce perfect results would be
956 welcome.
957 */
958static void hbsetup(i_quantize *quant, hashbox *hb) {
a659442a 959 long *dists, mind, maxd;
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960 int cr, cb, cg, hbnum, i;
961 i_color cenc;
962#ifdef HB_SORT
963 int *indices = mymalloc(quant->mc_count * sizeof(int));
964#endif
965
966 dists = mymalloc(quant->mc_count * sizeof(long));
967 for (cr = 0; cr < 8; ++cr) {
968 for (cg = 0; cg < 8; ++cg) {
969 for (cb = 0; cb < 8; ++cb) {
970 /* centre of the hashbox */
971 cenc.channel[0] = cr*pboxjump+pboxjump/2;
972 cenc.channel[1] = cg*pboxjump+pboxjump/2;
973 cenc.channel[2] = cb*pboxjump+pboxjump/2;
974 hbnum = pixbox(&cenc);
975 hb[hbnum].cnt = 0;
976 /* order indices in the order of distance from the hashbox */
977 for (i = 0; i < quant->mc_count; ++i) {
978#ifdef HB_SORT
979 indices[i] = i;
980#endif
981 dists[i] = ceucl_d(&cenc, quant->mc_colors+i);
982 }
983#ifdef HB_SORT
984 /* it should be possible to do this without a sort
985 but so far I'm too lazy */
986 gdists = dists;
987 qsort(indices, quant->mc_count, sizeof(int), distcomp);
988 /* any colors that can match are within mind+diagonal size of
989 a hashbox */
990 mind = dists[indices[0]];
991 i = 0;
992 maxd = (sqrt(mind)+pboxjump)*(sqrt(mind)+pboxjump);
993 while (i < quant->mc_count && dists[indices[i]] < maxd) {
994 hb[hbnum].vec[hb[hbnum].cnt++] = indices[i++];
995 }
996#else
997 /* work out the minimum */
998 mind = 256*256*3;
999 for (i = 0; i < quant->mc_count; ++i) {
1000 if (dists[i] < mind) mind = dists[i];
1001 }
1002 /* transfer any colours that might be closest to a colour in
1003 this hashbox */
1004 maxd = (sqrt(mind)+pboxjump)*(sqrt(mind)+pboxjump);
1005 for (i = 0; i < quant->mc_count; ++i) {
1006 if (dists[i] < maxd)
1007 hb[hbnum].vec[hb[hbnum].cnt++] = i;
1008 }
1009#endif
1010 }
1011 }
862b614c 1012 }
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1013#ifdef HB_SORT
1014 myfree(indices);
1015#endif
1016 myfree(dists) ;
1017}
1018#define CF_SETUP hbsetup(quant, hb)
1019
1020#define CF_FIND \
1021 currhb = pixbox(&val); \
1022 ld = 196608; \
1023 for (i = 0; i < hb[currhb].cnt; ++i) { \
1024 cd = ceucl_d(quant->mc_colors+hb[currhb].vec[i], &val); \
1025 if (cd < ld) { ld = cd; bst_idx = hb[currhb].vec[i]; } \
1026 }
1027
9cfd5724 1028#define CF_CLEANUP myfree(hb)
02d1d628
AMH
1029
1030#endif
1031
1032#ifdef IM_CFLINSEARCH
1033/* as simple as it gets */
1034#define CF_VARS long ld, cd
1035#define CF_SETUP /* none needed */
1036#define CF_FIND \
1037 ld = 196608; \
1038 for (i = 0; i < quant->mc_count; ++i) { \
1039 cd = ceucl_d(quant->mc_colors+i, &val); \
1040 if (cd < ld) { ld = cd; bst_idx = i; } \
1041 }
1042#define CF_CLEANUP
1043#endif
1044
1045#ifdef IM_CFSORTCHAN
1046static int gsortchan;
1047static i_quantize *gquant;
1048static int chansort(void const *a, void const *b) {
1049 return gquant->mc_colors[*(int const *)a].channel[gsortchan] -
1050 gquant->mc_colors[*(int const *)b].channel[gsortchan];
1051}
1052#define CF_VARS int *indices, sortchan, diff; \
1053 long ld, cd; \
1054 int vindex[256] /* where to find value i of chan */
1055
1056static void chansetup(i_img *img, i_quantize *quant, int *csortchan,
1057 int *vindex, int **cindices) {
1058 int *indices, sortchan, chan, i, chval;
1059 int chanmins[MAXCHANNELS], chanmaxs[MAXCHANNELS], maxrange;
1060
1061 /* find the channel with the maximum range */
1062 /* the maximum stddev would probably be better */
1063 for (chan = 0; chan < img->channels; ++chan) {
1064 chanmins[chan] = 256; chanmaxs[chan] = 0;
1065 for (i = 0; i < quant->mc_count; ++i) {
1066 if (quant->mc_colors[i].channel[chan] < chanmins[chan])
1067 chanmins[chan] = quant->mc_colors[i].channel[chan];
1068 if (quant->mc_colors[i].channel[chan] > chanmaxs[chan])
1069 chanmaxs[chan] = quant->mc_colors[i].channel[chan];
1070 }
1071 }
1072 maxrange = -1;
1073 for (chan = 0; chan < img->channels; ++chan) {
1074 if (chanmaxs[chan]-chanmins[chan] > maxrange) {
1075 maxrange = chanmaxs[chan]-chanmins[chan];
1076 sortchan = chan;
1077 }
1078 }
1079 indices = mymalloc(quant->mc_count * sizeof(int)) ;
1080 for (i = 0; i < quant->mc_count; ++i) {
1081 indices[i] = i;
1082 }
1083 gsortchan = sortchan;
1084 gquant = quant;
1085 qsort(indices, quant->mc_count, sizeof(int), chansort) ;
1086 /* now a lookup table to find entries faster */
1087 for (chval=0, i=0; i < quant->mc_count; ++i) {
1088 while (chval < 256 &&
1089 chval < quant->mc_colors[indices[i]].channel[sortchan]) {
1090 vindex[chval++] = i;
1091 }
1092 }
1093 while (chval < 256) {
1094 vindex[chval++] = quant->mc_count-1;
1095 }
1096 *csortchan = sortchan;
1097 *cindices = indices;
1098}
1099
1100#define CF_SETUP \
1101 chansetup(img, quant, &sortchan, vindex, &indices)
1102
1103int chanfind(i_color val, i_quantize *quant, int *indices, int *vindex,
1104 int sortchan) {
1105 int i, bst_idx, diff, maxdiff;
1106 long ld, cd;
1107
1108 i = vindex[val.channel[sortchan]];
1109 bst_idx = indices[i];
1110 ld = 196608;
1111 diff = 0;
1112 maxdiff = quant->mc_count;
1113 while (diff < maxdiff) {
1114 if (i+diff < quant->mc_count) {
1115 cd = ceucl_d(&val, quant->mc_colors+indices[i+diff]);
1116 if (cd < ld) {
1117 bst_idx = indices[i+diff];
1118 ld = cd;
1119 maxdiff = sqrt(ld);
1120 }
1121 }
1122 if (i-diff >= 0) {
1123 cd = ceucl_d(&val, quant->mc_colors+indices[i-diff]);
1124 if (cd < ld) {
1125 bst_idx = indices[i-diff];
1126 ld = cd;
1127 maxdiff = sqrt(ld);
1128 }
1129 }
1130 ++diff;
1131 }
1132
1133 return bst_idx;
1134}
1135
1136#define CF_FIND \
1137 bst_idx = chanfind(val, quant, indices, vindex, sortchan)
1138
1139
1140#define CF_CLEANUP myfree(indices)
1141
1142#endif
1143
1144#ifdef IM_CFRAND2DIST
1145
1146/* This is based on a method described by Addi in the #imager channel
1147 on the 28/2/2001. I was about 1am Sydney time at the time, so I
1148 wasn't at my most cogent. Well, that's my excuse :)
1149
1150<TonyC> what I have at the moment is: hashboxes, with optimum hash box
1151filling; simple linear search; and a lookup in the widest channel
1152(currently the channel with the maximum range)
1153<Addi> There is one more way that might be simple to implement.
1154<Addi> You want to hear?
1155<TonyC> what's that?
1156<purl> somebody said that was not true
1157<Addi> For each of the colors in the palette start by creating a
1158sorted list of the form:
1159<Addi> [distance, color]
1160<Addi> Where they are sorted by distance.
1161<TonyC> distance to where?
1162<Addi> Where the elements in the lists are the distances and colors of
1163the other colors in the palette
1164<TonyC> ok
1165<Addi> So if you are at color 0
1166<Addi> ok - now to search for the closest color when you are creating
1167the final image is done like this:
1168<Addi> a) pick a random color from the palette
1169<Addi> b) calculate the distance to it
1170<Addi> c) only check the vectors that are within double the distance
1171in the list of the color you picked from the palette.
1172<Addi> Does that seem logical?
1173<Addi> Lets imagine that we only have grayscale to make an example:
1174<Addi> Our palette has 1 4 10 20 as colors.
1175<Addi> And we want to quantize the color 11
1176<Addi> lets say we picked 10 randomly
1177<Addi> the double distance is 2
1178<Addi> since abs(10-11)*2 is 2
1179<Addi> And the list at vector 10 is this:
1180<Addi> [0, 10], [6 4], [9, 1], [10, 20]
1181<Addi> so we look at the first one (but not the second one since 6 is
1182at a greater distance than 2.
1183<Addi> Any of that make sense?
1184<TonyC> yes, though are you suggesting another random jump to one of
1185the colours with the possible choices? or an exhaustive search?
1186<Addi> TonyC: It's possible to come up with a recursive/iterative
1187enhancement but this is the 'basic' version.
1188<Addi> Which would do an iterative search.
1189<Addi> You can come up with conditions where it pays to switch to a new one.
1190<Addi> And the 'random' start can be switched over to a small tree.
1191<Addi> So you would have a little index at the start.
1192<Addi> to get you into the general direction
1193<Addi> Perhaps just an 8 split.
1194<Addi> that is - split each dimension in half.
1195<TonyC> yep
1196<TonyC> I get the idea
1197<Addi> But this would seem to be a good approach in our case since we
1198usually have few codevectors.
1199<Addi> So we only need 256*256 entries in a table.
1200<Addi> We could even only index some of them that were deemed as good
1201candidates.
1202<TonyC> I was considering adding paletted output support for PNG and
1203TIFF at some point, which support 16-bit palettes
1204<Addi> ohh.
1205<Addi> 'darn' ;)
1206
1207
1208*/
1209
1210
1211typedef struct i_dists {
1212 int index;
1213 long dist;
1214} i_dists;
1215
1216#define CF_VARS \
1217 i_dists *dists;
1218
1219static int dists_sort(void const *a, void const *b) {
1220 return ((i_dists *)a)->dist - ((i_dists *)b)->dist;
1221}
1222
1223static void rand2dist_setup(i_quantize *quant, i_dists **cdists) {
1224 i_dists *dists =
1225 mymalloc(sizeof(i_dists)*quant->mc_count*quant->mc_count);
1226 int i, j;
1227 long cd;
1228 for (i = 0; i < quant->mc_count; ++i) {
1229 i_dists *ldists = dists + quant->mc_count * i;
1230 i_color val = quant->mc_colors[i];
1231 for (j = 0; j < quant->mc_count; ++j) {
1232 ldists[j].index = j;
1233 ldists[j].dist = ceucl_d(&val, quant->mc_colors+j);
1234 }
1235 qsort(ldists, quant->mc_count, sizeof(i_dists), dists_sort);
1236 }
1237 *cdists = dists;
1238}
1239
1240#define CF_SETUP \
1241 bst_idx = rand() % quant->mc_count; \
1242 rand2dist_setup(quant, &dists)
1243
1244static int rand2dist_find(i_color val, i_quantize *quant, i_dists *dists, int index) {
1245 i_dists *cdists;
1246 long cd, ld;
1247 long maxld;
1248 int i;
1249 int bst_idx;
1250
1251 cdists = dists + index * quant->mc_count;
1252 ld = 3 * 256 * 256;
1253 maxld = 8 * ceucl_d(&val, quant->mc_colors+index);
1254 for (i = 0; i < quant->mc_count && cdists[i].dist <= maxld; ++i) {
1255 cd = ceucl_d(&val, quant->mc_colors+cdists[i].index);
1256 if (cd < ld) {
1257 bst_idx = cdists[i].index;
1258 ld = cd;
1259 }
1260 }
1261 return bst_idx;
1262}
1263
1264#define CF_FIND bst_idx = rand2dist_find(val, quant, dists, bst_idx)
1265
1266#define CF_CLEANUP myfree(dists)
1267
1268
1269#endif
1270
1271static void translate_addi(i_quantize *quant, i_img *img, i_palidx *out) {
8d14daab
TC
1272 i_img_dim x, y, k;
1273 int i, bst_idx = 0;
02d1d628
AMH
1274 i_color val;
1275 int pixdev = quant->perturb;
1276 CF_VARS;
1277
1278 CF_SETUP;
1279
18accb2a
TC
1280 if (img->channels >= 3) {
1281 if (pixdev) {
1282 k=0;
1283 for(y=0;y<img->ysize;y++) for(x=0;x<img->xsize;x++) {
1284 i_gpix(img,x,y,&val);
1285 val.channel[0]=g_sat(val.channel[0]+(int)(pixdev*frandn()));
1286 val.channel[1]=g_sat(val.channel[1]+(int)(pixdev*frandn()));
1287 val.channel[2]=g_sat(val.channel[2]+(int)(pixdev*frandn()));
1288 CF_FIND;
1289 out[k++]=bst_idx;
1290 }
1291 } else {
1292 k=0;
1293 for(y=0;y<img->ysize;y++) for(x=0;x<img->xsize;x++) {
1294 i_gpix(img,x,y,&val);
1295 CF_FIND;
1296 out[k++]=bst_idx;
1297 }
02d1d628 1298 }
18accb2a
TC
1299 }
1300 else {
1301 if (pixdev) {
1302 k=0;
1303 for(y=0;y<img->ysize;y++) for(x=0;x<img->xsize;x++) {
1304 i_gpix(img,x,y,&val);
1305 val.channel[1] = val.channel[2] =
1306 val.channel[0]=g_sat(val.channel[0]+(int)(pixdev*frandn()));
1307 CF_FIND;
1308 out[k++]=bst_idx;
1309 }
1310 } else {
1311 k=0;
1312 for(y=0;y<img->ysize;y++) for(x=0;x<img->xsize;x++) {
1313 i_gpix(img,x,y,&val);
1314 val.channel[1] = val.channel[2] = val.channel[0];
1315 CF_FIND;
1316 out[k++]=bst_idx;
1317 }
02d1d628
AMH
1318 }
1319 }
1320 CF_CLEANUP;
1321}
1322
1323static int floyd_map[] =
1324{
1325 0, 0, 7,
1326 3, 5, 1
1327};
1328
1329static int jarvis_map[] =
1330{
1331 0, 0, 0, 7, 5,
1332 3, 5, 7, 5, 3,
1333 1, 3, 5, 3, 1
1334};
1335
1336static int stucki_map[] =
1337{
1338 0, 0, 0, 8, 4,
1339 2, 4, 8, 4, 2,
1340 1, 2, 4, 2, 1
1341};
1342
1343struct errdiff_map {
1344 int *map;
1345 int width, height, orig;
1346};
1347
1348static struct errdiff_map maps[] =
1349{
1350 { floyd_map, 3, 2, 1 },
1351 { jarvis_map, 5, 3, 2 },
1352 { stucki_map, 5, 3, 2 },
1353};
1354
1355typedef struct errdiff_tag {
1356 int r, g, b;
1357} errdiff_t;
1358
1359/* perform an error diffusion dither */
a3b721bb 1360static int
02d1d628
AMH
1361translate_errdiff(i_quantize *quant, i_img *img, i_palidx *out) {
1362 int *map;
1363 int mapw, maph, mapo;
1364 int i;
1365 errdiff_t *err;
8d14daab 1366 i_img_dim errw;
02d1d628 1367 int difftotal;
8d14daab 1368 i_img_dim x, y, dx, dy;
b07bc64b 1369 int bst_idx = 0;
6d068d36 1370 int is_gray = is_gray_map(quant);
02d1d628
AMH
1371 CF_VARS;
1372
1373 if ((quant->errdiff & ed_mask) == ed_custom) {
1374 map = quant->ed_map;
1375 mapw = quant->ed_width;
1376 maph = quant->ed_height;
1377 mapo = quant->ed_orig;
1378 }
1379 else {
1380 int index = quant->errdiff & ed_mask;
1381 if (index >= ed_custom) index = ed_floyd;
1382 map = maps[index].map;
1383 mapw = maps[index].width;
1384 maph = maps[index].height;
1385 mapo = maps[index].orig;
1386 }
1387
a3b721bb
TC
1388 difftotal = 0;
1389 for (i = 0; i < maph * mapw; ++i) {
1390 if (map[i] < 0) {
1391 i_push_errorf(0, "errdiff_map values must be non-negative, errdiff[%d] is negative", i);
1392 return 0;
1393 }
1394 difftotal += map[i];
1395 }
1396
1397 if (!difftotal) {
1398 i_push_error(0, "error diffusion map must contain some non-zero values");
1399 return 0;
1400 }
1401
02d1d628
AMH
1402 errw = img->xsize+mapw;
1403 err = mymalloc(sizeof(*err) * maph * errw);
1404 /*errp = err+mapo;*/
1405 memset(err, 0, sizeof(*err) * maph * errw);
1406
02d1d628
AMH
1407 /*printf("map:\n");
1408 for (dy = 0; dy < maph; ++dy) {
1409 for (dx = 0; dx < mapw; ++dx) {
1410 printf("%2d", map[dx+dy*mapw]);
1411 }
1412 putchar('\n');
1413 }*/
1414
1415 CF_SETUP;
1416
1417 for (y = 0; y < img->ysize; ++y) {
1418 for (x = 0; x < img->xsize; ++x) {
1419 i_color val;
02d1d628
AMH
1420 errdiff_t perr;
1421 i_gpix(img, x, y, &val);
18accb2a
TC
1422 if (img->channels < 3) {
1423 val.channel[1] = val.channel[2] = val.channel[0];
1424 }
6d068d36
TC
1425 else if (is_gray) {
1426 int gray = 0.5 + color_to_grey(&val);
1427 val.channel[0] = val.channel[1] = val.channel[2] = gray;
1428 }
02d1d628
AMH
1429 perr = err[x+mapo];
1430 perr.r = perr.r < 0 ? -((-perr.r)/difftotal) : perr.r/difftotal;
1431 perr.g = perr.g < 0 ? -((-perr.g)/difftotal) : perr.g/difftotal;
1432 perr.b = perr.b < 0 ? -((-perr.b)/difftotal) : perr.b/difftotal;
1433 /*printf("x %3d y %3d in(%3d, %3d, %3d) di(%4d,%4d,%4d)\n", x, y, val.channel[0], val.channel[1], val.channel[2], perr.r, perr.g, perr.b);*/
1434 val.channel[0] = g_sat(val.channel[0]-perr.r);
1435 val.channel[1] = g_sat(val.channel[1]-perr.g);
1436 val.channel[2] = g_sat(val.channel[2]-perr.b);
1437 CF_FIND;
1438 /* save error */
1439 perr.r = quant->mc_colors[bst_idx].channel[0] - val.channel[0];
1440 perr.g = quant->mc_colors[bst_idx].channel[1] - val.channel[1];
1441 perr.b = quant->mc_colors[bst_idx].channel[2] - val.channel[2];
1442 /*printf(" out(%3d, %3d, %3d) er(%4d, %4d, %4d)\n", quant->mc_colors[bst_idx].channel[0], quant->mc_colors[bst_idx].channel[1], quant->mc_colors[bst_idx].channel[2], perr.r, perr.g, perr.b);*/
1443 for (dx = 0; dx < mapw; ++dx) {
1444 for (dy = 0; dy < maph; ++dy) {
1445 err[x+dx+dy*errw].r += perr.r * map[dx+mapw*dy];
1446 err[x+dx+dy*errw].g += perr.g * map[dx+mapw*dy];
1447 err[x+dx+dy*errw].b += perr.b * map[dx+mapw*dy];
1448 }
1449 }
1450 *out++ = bst_idx;
1451 }
1452 /* shift up the error matrix */
1453 for (dy = 0; dy < maph-1; ++dy) {
1454 memcpy(err+dy*errw, err+(dy+1)*errw, sizeof(*err)*errw);
1455 }
1456 memset(err+(maph-1)*errw, 0, sizeof(*err)*errw);
1457 }
1458 CF_CLEANUP;
7fd765fe 1459 myfree(err);
a3b721bb
TC
1460
1461 return 1;
02d1d628
AMH
1462}
1463/* Prescan finds the boxes in the image that have the highest number of colors
1464 and that result is used as the initial value for the vectores */
1465
1466
18accb2a 1467static void prescan(i_img **imgs,int count, int cnum, cvec *clr, i_sample_t *line) {
8d14daab
TC
1468 int i,k,j;
1469 i_img_dim x,y;
18accb2a
TC
1470 i_sample_t *val;
1471 const int *chans;
02d1d628
AMH
1472
1473 pbox prebox[512];
1474 for(i=0;i<512;i++) {
1475 prebox[i].boxnum=i;
1476 prebox[i].pixcnt=0;
1477 prebox[i].cand=1;
1478 }
1479
1480 /* process each image */
1481 for (i = 0; i < count; ++i) {
1482 i_img *im = imgs[i];
18accb2a
TC
1483 chans = im->channels >= 3 ? NULL : gray_samples;
1484 for(y=0;y<im->ysize;y++) {
1485 i_gsamp(im, 0, im->xsize, y, line, chans, 3);
1486 val = line;
1487 for(x=0;x<im->xsize;x++) {
1488 prebox[pixbox_ch(val)].pixcnt++;
1489 }
02d1d628
AMH
1490 }
1491 }
1492
1493 for(i=0;i<512;i++) prebox[i].pdc=prebox[i].pixcnt;
1494 qsort(prebox,512,sizeof(pbox),(cmpfunc)pboxcmp);
1495
1496 for(i=0;i<cnum;i++) {
1497 /* printf("Color %d\n",i);
1498 for(k=0;k<10;k++) { printf("box=%03d %04d %d %04d \n",prebox[k].boxnum,prebox[k].pixcnt,prebox[k].cand,prebox[k].pdc); }
1499 printf("\n\n"); */
1500 reorder(prebox);
1501 }
1502
1503 /* for(k=0;k<cnum;k++) { printf("box=%03d %04d %d %04d \n",prebox[k].boxnum,prebox[k].pixcnt,prebox[k].cand,prebox[k].pdc); } */
1504
1505 k=0;
1506 j=1;
1507 i=0;
1508 while(i<cnum) {
1509 /* printf("prebox[%d].cand=%d\n",k,prebox[k].cand); */
36e67d0b 1510 if (clr[i].fixed) { i++; continue; } /* reserved go to next */
02d1d628
AMH
1511 if (j>=prebox[k].cand) { k++; j=1; } else {
1512 if (prebox[k].cand == 2) boxcenter(prebox[k].boxnum,&(clr[i]));
1513 else boxrand(prebox[k].boxnum,&(clr[i]));
1514 /* printf("(%d,%d) %d %d -> (%d,%d,%d)\n",k,j,prebox[k].boxnum,prebox[k].pixcnt,clr[i].r,clr[i].g,clr[i].b); */
1515 j++;
1516 i++;
1517 }
1518 }
1519}
1520
1521
1522static void reorder(pbox prescan[512]) {
1523 int nidx;
1524 pbox c;
1525
1526 nidx=0;
1527 c=prescan[0];
1528
1529 c.cand++;
1530 c.pdc=c.pixcnt/(c.cand*c.cand);
1531 /* c.pdc=c.pixcnt/c.cand; */
f7675b46 1532 while(nidx < 511 && c.pdc < prescan[nidx+1].pdc) {
02d1d628
AMH
1533 prescan[nidx]=prescan[nidx+1];
1534 nidx++;
1535 }
1536 prescan[nidx]=c;
1537}
1538
1539static int
1540pboxcmp(const pbox *a,const pbox *b) {
1541 if (a->pixcnt > b->pixcnt) return -1;
1542 if (a->pixcnt < b->pixcnt) return 1;
1543 return 0;
1544}
1545
1546static void
1547boxcenter(int box,cvec *cv) {
1548 cv->r=15+((box&448)>>1);
1549 cv->g=15+((box&56)<<2);
1550 cv->b=15+((box&7)<<5);
1551}
1552
1553static void
1554bbox(int box,int *r0,int *r1,int *g0,int *g1,int *b0,int *b1) {
1555 *r0=(box&448)>>1;
1556 *r1=(*r0)|31;
1557 *g0=(box&56)<<2;
1558 *g1=(*g0)|31;
1559 *b0=(box&7)<<5;
1560 *b1=(*b0)|31;
1561}
1562
1563static void
1564boxrand(int box,cvec *cv) {
1565 cv->r=6+(rand()%25)+((box&448)>>1);
1566 cv->g=6+(rand()%25)+((box&56)<<2);
1567 cv->b=6+(rand()%25)+((box&7)<<5);
1568}
1569
1570static float
1571frandn(void) {
1572
1573 float u1,u2,w;
1574
1575 w=1;
1576
1577 while (w >= 1 || w == 0) {
1578 u1 = 2 * frand() - 1;
1579 u2 = 2 * frand() - 1;
1580 w = u1*u1 + u2*u2;
1581 }
1582
1583 w = sqrt((-2*log(w))/w);
1584 return u1*w;
1585}
1586
1587/* Create hash index */
1588static
1589void
1590cr_hashindex(cvec clr[256],int cnum,hashbox hb[512]) {
1591
98747309 1592 int bx,mind,cd,cumcnt,i;
02d1d628
AMH
1593/* printf("indexing... \n");*/
1594
1595 cumcnt=0;
1596 for(bx=0; bx<512; bx++) {
1597 mind=196608;
1598 for(i=0; i<cnum; i++) {
1599 cd = maxdist(bx,&clr[i]);
98747309 1600 if (cd < mind) { mind=cd; }
02d1d628
AMH
1601 }
1602
1603 hb[bx].cnt=0;
1604 for(i=0;i<cnum;i++) if (mindist(bx,&clr[i])<mind) hb[bx].vec[hb[bx].cnt++]=i;
1605 /*printf("box %d -> approx -> %d\n",bx,hb[bx].cnt); */
1606 /* statbox(bx,cnum,clr); */
1607 cumcnt+=hb[bx].cnt;
1608 }
1609
1610/* printf("Average search space: %d\n",cumcnt/512); */
1611}
1612
1613static int
1614maxdist(int boxnum,cvec *cv) {
1615 int r0,r1,g0,g1,b0,b1;
1616 int r,g,b,mr,mg,mb;
1617
1618 r=cv->r;
1619 g=cv->g;
1620 b=cv->b;
1621
1622 bbox(boxnum,&r0,&r1,&g0,&g1,&b0,&b1);
1623
b33c08f8
TC
1624 mr=i_max(abs(b-b0),abs(b-b1));
1625 mg=i_max(abs(g-g0),abs(g-g1));
1626 mb=i_max(abs(r-r0),abs(r-r1));
02d1d628
AMH
1627
1628 return PWR2(mr)+PWR2(mg)+PWR2(mb);
1629}
1630
1631static int
1632mindist(int boxnum,cvec *cv) {
1633 int r0,r1,g0,g1,b0,b1;
1634 int r,g,b,mr,mg,mb;
1635
1636 r=cv->r;
1637 g=cv->g;
1638 b=cv->b;
1639
1640 bbox(boxnum,&r0,&r1,&g0,&g1,&b0,&b1);
1641
1642 /* printf("box %d, (%d,%d,%d)-(%d,%d,%d) vec (%d,%d,%d) ",boxnum,r0,g0,b0,r1,g1,b1,r,g,b); */
1643
1644 if (r0<=r && r<=r1 && g0<=g && g<=g1 && b0<=b && b<=b1) return 0;
1645
b33c08f8
TC
1646 mr=i_min(abs(b-b0),abs(b-b1));
1647 mg=i_min(abs(g-g0),abs(g-g1));
1648 mb=i_min(abs(r-r0),abs(r-r1));
02d1d628
AMH
1649
1650 mr=PWR2(mr);
1651 mg=PWR2(mg);
1652 mb=PWR2(mb);
1653
1654 if (r0<=r && r<=r1 && g0<=g && g<=g1) return mb;
1655 if (r0<=r && r<=r1 && b0<=b && b<=b1) return mg;
1656 if (b0<=b && b<=b1 && g0<=g && g<=g1) return mr;
1657
1658 if (r0<=r && r<=r1) return mg+mb;
1659 if (g0<=g && g<=g1) return mr+mb;
1660 if (b0<=b && b<=b1) return mg+mr;
1661
1662 return mr+mg+mb;
1663}
1664
1665static void transparent_threshold(i_quantize *, i_palidx *, i_img *, i_palidx);
1666static void transparent_errdiff(i_quantize *, i_palidx *, i_img *, i_palidx);
1667static void transparent_ordered(i_quantize *, i_palidx *, i_img *, i_palidx);
1668
92bda632 1669/*
5715f7c3 1670=item i_quant_transparent(C<quant>, C<data>, C<img>, C<trans_index>)
92bda632
TC
1671
1672=category Image quantization
1673
5715f7c3
TC
1674Dither the alpha channel on C<img> into the palette indexes in
1675C<data>. Pixels to be transparent are replaced with C<trans_pixel>.
92bda632 1676
5715f7c3 1677The method used depends on the tr_* members of C<quant>.
92bda632
TC
1678
1679=cut
1680*/
1681
1682void
1683i_quant_transparent(i_quantize *quant, i_palidx *data, i_img *img,
02d1d628
AMH
1684 i_palidx trans_index)
1685{
1686 switch (quant->transp) {
1687 case tr_none:
1688 break;
1689
1690 default:
1691 quant->tr_threshold = 128;
1692 /* fall through */
1693 case tr_threshold:
1694 transparent_threshold(quant, data, img, trans_index);
1695 break;
1696
1697 case tr_errdiff:
1698 transparent_errdiff(quant, data, img, trans_index);
1699 break;
1700
1701 case tr_ordered:
1702 transparent_ordered(quant, data, img, trans_index);
1703 break;
1704 }
1705}
1706
1707static void
1708transparent_threshold(i_quantize *quant, i_palidx *data, i_img *img,
1709 i_palidx trans_index)
1710{
8d14daab 1711 i_img_dim x, y;
18accb2a
TC
1712 i_sample_t *line = mymalloc(img->xsize * sizeof(i_sample_t));
1713 int trans_chan = img->channels > 2 ? 3 : 1;
02d1d628
AMH
1714
1715 for (y = 0; y < img->ysize; ++y) {
18accb2a 1716 i_gsamp(img, 0, img->xsize, y, line, &trans_chan, 1);
02d1d628 1717 for (x = 0; x < img->xsize; ++x) {
18accb2a 1718 if (line[x] < quant->tr_threshold)
02d1d628
AMH
1719 data[y*img->xsize+x] = trans_index;
1720 }
1721 }
18accb2a 1722 myfree(line);
02d1d628
AMH
1723}
1724
1725static void
1726transparent_errdiff(i_quantize *quant, i_palidx *data, i_img *img,
1727 i_palidx trans_index)
1728{
1729 int *map;
1730 int index;
1731 int mapw, maph, mapo;
1732 int errw, *err, *errp;
1733 int difftotal, out, error;
8d14daab
TC
1734 i_img_dim x, y, dx, dy;
1735 int i;
18accb2a
TC
1736 i_sample_t *line;
1737 int trans_chan = img->channels > 2 ? 3 : 1;
02d1d628
AMH
1738
1739 /* no custom map for transparency (yet) */
1740 index = quant->tr_errdiff & ed_mask;
1741 if (index >= ed_custom) index = ed_floyd;
1742 map = maps[index].map;
1743 mapw = maps[index].width;
1744 maph = maps[index].height;
1745 mapo = maps[index].orig;
1746
1747 errw = img->xsize+mapw-1;
1748 err = mymalloc(sizeof(*err) * maph * errw);
1749 errp = err+mapo;
1750 memset(err, 0, sizeof(*err) * maph * errw);
1751
18accb2a 1752 line = mymalloc(img->xsize * sizeof(i_sample_t));
02d1d628
AMH
1753 difftotal = 0;
1754 for (i = 0; i < maph * mapw; ++i)
1755 difftotal += map[i];
1756 for (y = 0; y < img->ysize; ++y) {
18accb2a 1757 i_gsamp(img, 0, img->xsize, y, line, &trans_chan, 1);
02d1d628 1758 for (x = 0; x < img->xsize; ++x) {
18accb2a
TC
1759 line[x] = g_sat(line[x]-errp[x]/difftotal);
1760 if (line[x] < 128) {
02d1d628
AMH
1761 out = 0;
1762 data[y*img->xsize+x] = trans_index;
1763 }
1764 else {
1765 out = 255;
1766 }
18accb2a 1767 error = out - line[x];
02d1d628
AMH
1768 for (dx = 0; dx < mapw; ++dx) {
1769 for (dy = 0; dy < maph; ++dy) {
1770 errp[x+dx-mapo+dy*errw] += error * map[dx+mapw*dy];
1771 }
1772 }
1773 }
1774 /* shift up the error matrix */
1775 for (dy = 0; dy < maph-1; ++dy)
1776 memcpy(err+dy*errw, err+(dy+1)*errw, sizeof(*err)*errw);
1777 memset(err+(maph-1)*errw, 0, sizeof(*err)*errw);
1778 }
18accb2a
TC
1779 myfree(err);
1780 myfree(line);
02d1d628
AMH
1781}
1782
1783/* builtin ordered dither maps */
b33c08f8
TC
1784static unsigned char
1785orddith_maps[][64] =
02d1d628
AMH
1786{
1787 { /* random
1788 this is purely random - it's pretty awful
1789 */
1790 48, 72, 196, 252, 180, 92, 108, 52,
1791 228, 176, 64, 8, 236, 40, 20, 164,
1792 120, 128, 84, 116, 24, 28, 172, 220,
1793 68, 0, 188, 124, 184, 224, 192, 104,
1794 132, 100, 240, 200, 152, 160, 244, 44,
1795 96, 204, 144, 16, 140, 56, 232, 216,
1796 208, 4, 76, 212, 136, 248, 80, 168,
1797 156, 88, 32, 112, 148, 12, 36, 60,
1798 },
1799 {
1800 /* dot8
1801 perl spot.perl '($x-3.5)*($x-3.5)+($y-3.5)*($y-3.5)'
1802 */
1803 240, 232, 200, 136, 140, 192, 228, 248,
1804 220, 148, 100, 76, 80, 104, 152, 212,
1805 180, 116, 56, 32, 36, 60, 120, 176,
1806 156, 64, 28, 0, 8, 44, 88, 160,
1807 128, 92, 24, 12, 4, 40, 68, 132,
1808 184, 96, 48, 20, 16, 52, 108, 188,
1809 216, 144, 112, 72, 84, 124, 164, 224,
1810 244, 236, 196, 168, 172, 204, 208, 252,
1811 },
1812 { /* dot4
1813 perl spot.perl \
1814 'min(dist(1.5, 1.5),dist(5.5,1.5),dist(1.5,5.5),dist(5.5,5.5))'
1815 */
1816 196, 72, 104, 220, 200, 80, 112, 224,
1817 76, 4, 24, 136, 84, 8, 32, 144,
1818 108, 28, 52, 168, 116, 36, 56, 176,
1819 216, 140, 172, 244, 228, 148, 180, 248,
1820 204, 92, 124, 236, 192, 68, 96, 208,
1821 88, 12, 44, 156, 64, 0, 16, 128,
1822 120, 40, 60, 188, 100, 20, 48, 160,
1823 232, 152, 184, 252, 212, 132, 164, 240,
1824 },
1825 { /* hline
1826 perl spot.perl '$y-3'
1827 */
1828 160, 164, 168, 172, 176, 180, 184, 188,
1829 128, 132, 136, 140, 144, 148, 152, 156,
1830 32, 36, 40, 44, 48, 52, 56, 60,
1831 0, 4, 8, 12, 16, 20, 24, 28,
1832 64, 68, 72, 76, 80, 84, 88, 92,
1833 96, 100, 104, 108, 112, 116, 120, 124,
1834 192, 196, 200, 204, 208, 212, 216, 220,
1835 224, 228, 232, 236, 240, 244, 248, 252,
1836 },
1837 { /* vline
1838 perl spot.perl '$x-3'
1839 */
1840 180, 100, 40, 12, 44, 104, 184, 232,
1841 204, 148, 60, 16, 64, 128, 208, 224,
1842 212, 144, 76, 8, 80, 132, 216, 244,
1843 160, 112, 68, 20, 84, 108, 172, 236,
1844 176, 96, 72, 28, 88, 152, 188, 228,
1845 200, 124, 92, 0, 32, 116, 164, 240,
1846 168, 120, 36, 24, 48, 136, 192, 248,
1847 196, 140, 52, 4, 56, 156, 220, 252,
1848 },
1849 { /* slashline
1850 perl spot.perl '$y+$x-7'
1851 */
1852 248, 232, 224, 192, 140, 92, 52, 28,
1853 240, 220, 196, 144, 108, 60, 12, 64,
1854 216, 180, 148, 116, 76, 20, 80, 128,
1855 204, 152, 104, 44, 16, 72, 100, 160,
1856 164, 96, 68, 24, 56, 112, 168, 176,
1857 124, 40, 8, 36, 88, 136, 184, 212,
1858 84, 4, 32, 120, 156, 188, 228, 236,
1859 0, 48, 132, 172, 200, 208, 244, 252,
1860 },
1861 { /* backline
1862 perl spot.perl '$y-$x'
1863 */
1864 0, 32, 116, 172, 184, 216, 236, 252,
1865 56, 8, 72, 132, 136, 200, 228, 240,
1866 100, 36, 12, 40, 92, 144, 204, 220,
1867 168, 120, 60, 16, 44, 96, 156, 176,
1868 180, 164, 112, 48, 28, 52, 128, 148,
1869 208, 192, 152, 88, 84, 20, 64, 104,
1870 232, 224, 196, 140, 108, 68, 24, 76,
1871 248, 244, 212, 188, 160, 124, 80, 4,
1872 },
11e7329d
TC
1873 {
1874 /* tiny
1875 good for display, bad for print
1876 hand generated
1877 */
1878 0, 128, 32, 192, 8, 136, 40, 200,
1879 224, 64, 160, 112, 232, 72, 168, 120,
1880 48, 144, 16, 208, 56, 152, 24, 216,
1881 176, 96, 240, 80, 184, 104, 248, 88,
1882 12, 140, 44, 204, 4, 132, 36, 196,
1883 236, 76, 172, 124, 228, 68, 164, 116,
1884 60, 156, 28, 220, 52, 148, 20, 212,
1885 188, 108, 252, 92, 180, 100, 244, 84,
1886 },
02d1d628
AMH
1887};
1888
1889static void
1890transparent_ordered(i_quantize *quant, i_palidx *data, i_img *img,
1891 i_palidx trans_index)
1892{
1893 unsigned char *spot;
8d14daab 1894 i_img_dim x, y;
18accb2a
TC
1895 i_sample_t *line;
1896 int trans_chan = img->channels > 2 ? 3 : 1;
02d1d628
AMH
1897 if (quant->tr_orddith == od_custom)
1898 spot = quant->tr_custom;
1899 else
1900 spot = orddith_maps[quant->tr_orddith];
18accb2a
TC
1901
1902 line = mymalloc(img->xsize * sizeof(i_sample_t));
02d1d628 1903 for (y = 0; y < img->ysize; ++y) {
18accb2a 1904 i_gsamp(img, 0, img->xsize, y, line, &trans_chan, 1);
02d1d628 1905 for (x = 0; x < img->xsize; ++x) {
18accb2a 1906 if (line[x] < spot[(x&7)+(y&7)*8])
02d1d628
AMH
1907 data[x+y*img->xsize] = trans_index;
1908 }
1909 }
18accb2a 1910 myfree(line);
02d1d628 1911}
18accb2a 1912