Telegram-Android/TMessagesProj/jni/fast-edge.cpp

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2018-07-30 04:07:02 +02:00
/*
FAST-EDGE
Copyright (c) 2009 Benjamin C. Haynor
Permission is hereby granted, free of charge, to any person
obtaining a copy of this software and associated documentation
files (the "Software"), to deal in the Software without
restriction, including without limitation the rights to use,
copy, modify, merge, publish, distribute, sublicense, and/or sell
copies of the Software, and to permit persons to whom the
Software is furnished to do so, subject to the following
conditions:
The above copyright notice and this permission notice shall be
included in all copies or substantial portions of the Software.
THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND,
EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES
OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND
NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT
HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY,
WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING
FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR
OTHER DEALINGS IN THE SOFTWARE.
*/
#include <stdio.h>
#include <stdlib.h>
#include <string.h>
#include <math.h>
#include <time.h>
#include "fast-edge.h"
#define LOW_THRESHOLD_PERCENTAGE 0.8 // percentage of the high threshold value that the low threshold shall be set at
#define PI 3.14159265
#define HIGH_THRESHOLD_PERCENTAGE 0.10 // percentage of pixels that meet the high threshold - for example 0.15 will ensure that at least 15% of edge pixels are considered to meet the high threshold
#define min(X,Y) ((X) < (Y) ? (X) : (Y))
#define max(X,Y) ((X) < (Y) ? (Y) : (X))
namespace ocr{
/*
CANNY EDGE DETECT
DOES NOT PERFORM NOISE REDUCTION - PERFORM NOISE REDUCTION PRIOR TO USE
Noise reduction omitted, as some applications benefit from morphological operations such as opening or closing as opposed to Gaussian noise reduction
If your application always takes the same size input image, uncomment the definitions of WIDTH and HEIGHT in the header file and define them to the size of your input image,
otherwise the required intermediate arrays will be dynamically allocated.
If WIDTH and HEIGHT are defined, the arrays will be allocated in the compiler directive that follows:
*/
#ifdef WIDTH
int g[WIDTH * HEIGHT], dir[WIDTH * HEIGHT] = {0};
unsigned char img_scratch_data[WIDTH * HEIGHT] = {0};
#endif
void canny_edge_detect(struct image * img_in, struct image * img_out) {
struct image img_scratch;
int high, low;
#ifndef WIDTH
int * g = (int*)calloc(static_cast<size_t>(img_in->width*img_in->height), sizeof(int));
int * dir = (int*)calloc(static_cast<size_t>(img_in->width*img_in->height), sizeof(int));
unsigned char * img_scratch_data = (unsigned char*)calloc(static_cast<size_t>(img_in->width*img_in->height), sizeof(char));
#endif
img_scratch.width = img_in->width;
img_scratch.height = img_in->height;
img_scratch.pixel_data = img_scratch_data;
calc_gradient_sobel(img_in, g, dir);
//printf("*** performing non-maximum suppression ***\n");
non_max_suppression(&img_scratch, g, dir);
estimate_threshold(&img_scratch, &high, &low);
hysteresis(high, low, &img_scratch, img_out);
#ifndef WIDTH
free(g);
free(dir);
free(img_scratch_data);
#endif
}
/*
GAUSSIAN_NOISE_ REDUCE
apply 5x5 Gaussian convolution filter, shrinks the image by 4 pixels in each direction, using Gaussian filter found here:
http://en.wikipedia.org/wiki/Canny_edge_detector
*/
void gaussian_noise_reduce(struct image * img_in, struct image * img_out)
{
#ifdef CLOCK
clock_t start = clock();
#endif
int w, h, x, y, max_x, max_y;
w = img_in->width;
h = img_in->height;
img_out->width = w;
img_out->height = h;
max_x = w - 2;
max_y = w * (h - 2);
for (y = w * 2; y < max_y; y += w) {
for (x = 2; x < max_x; x++) {
img_out->pixel_data[x + y] = (2 * img_in->pixel_data[x + y - 2 - w - w] +
4 * img_in->pixel_data[x + y - 1 - w - w] +
5 * img_in->pixel_data[x + y - w - w] +
4 * img_in->pixel_data[x + y + 1 - w - w] +
2 * img_in->pixel_data[x + y + 2 - w - w] +
4 * img_in->pixel_data[x + y - 2 - w] +
9 * img_in->pixel_data[x + y - 1 - w] +
12 * img_in->pixel_data[x + y - w] +
9 * img_in->pixel_data[x + y + 1 - w] +
4 * img_in->pixel_data[x + y + 2 - w] +
5 * img_in->pixel_data[x + y - 2] +
12 * img_in->pixel_data[x + y - 1] +
15 * img_in->pixel_data[x + y] +
12 * img_in->pixel_data[x + y + 1] +
5 * img_in->pixel_data[x + y + 2] +
4 * img_in->pixel_data[x + y - 2 + w] +
9 * img_in->pixel_data[x + y - 1 + w] +
12 * img_in->pixel_data[x + y + w] +
9 * img_in->pixel_data[x + y + 1 + w] +
4 * img_in->pixel_data[x + y + 2 + w] +
2 * img_in->pixel_data[x + y - 2 + w + w] +
4 * img_in->pixel_data[x + y - 1 + w + w] +
5 * img_in->pixel_data[x + y + w + w] +
4 * img_in->pixel_data[x + y + 1 + w + w] +
2 * img_in->pixel_data[x + y + 2 + w + w]) / 159;
}
}
#ifdef CLOCK
printf("Gaussian noise reduction - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
/*
CALC_GRADIENT_SOBEL
calculates the result of the Sobel operator - http://en.wikipedia.org/wiki/Sobel_operator - and estimates edge direction angle
*/
/*void calc_gradient_sobel(struct image * img_in, int g_x[], int g_y[], int g[], int dir[]) {//float theta[]) {*/
void calc_gradient_sobel(struct image * img_in, int g[], int dir[]) {
#ifdef CLOCK
clock_t start = clock();
#endif
int w, h, x, y, max_x, max_y, g_x, g_y;
float g_div;
w = img_in->width;
h = img_in->height;
max_x = w - 3;
max_y = w * (h - 3);
for (y = w * 3; y < max_y; y += w) {
for (x = 3; x < max_x; x++) {
g_x = (2 * img_in->pixel_data[x + y + 1]
+ img_in->pixel_data[x + y - w + 1]
+ img_in->pixel_data[x + y + w + 1]
- 2 * img_in->pixel_data[x + y - 1]
- img_in->pixel_data[x + y - w - 1]
- img_in->pixel_data[x + y + w - 1]);
g_y = 2 * img_in->pixel_data[x + y - w]
+ img_in->pixel_data[x + y - w + 1]
+ img_in->pixel_data[x + y - w - 1]
- 2 * img_in->pixel_data[x + y + w]
- img_in->pixel_data[x + y + w + 1]
- img_in->pixel_data[x + y + w - 1];
#ifndef ABS_APPROX
g[x + y] = sqrt(g_x * g_x + g_y * g_y);
#endif
#ifdef ABS_APPROX
g[x + y] = abs(g_x[x + y]) + abs(g_y[x + y]);
#endif
if (g_x == 0) {
dir[x + y] = 2;
} else {
g_div = g_y / (float) g_x;
/* the following commented-out code is slightly faster than the code that follows, but is a slightly worse approximation for determining the edge direction angle
if (g_div < 0) {
if (g_div < -1) {
dir[n] = 0;
} else {
dir[n] = 1;
}
} else {
if (g_div > 1) {
dir[n] = 0;
} else {
dir[n] = 3;
}
}
*/
if (g_div < 0) {
if (g_div < -2.41421356237) {
dir[x + y] = 0;
} else {
if (g_div < -0.414213562373) {
dir[x + y] = 1;
} else {
dir[x + y] = 2;
}
}
} else {
if (g_div > 2.41421356237) {
dir[x + y] = 0;
} else {
if (g_div > 0.414213562373) {
dir[x + y] = 3;
} else {
dir[x + y] = 2;
}
}
}
}
}
}
#ifdef CLOCK
printf("Calculate gradient Sobel - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
/*
CALC_GRADIENT_SCHARR
calculates the result of the Scharr version of the Sobel operator - http://en.wikipedia.org/wiki/Sobel_operator - and estimates edge direction angle
may have better rotational symmetry
*/
void calc_gradient_scharr(struct image * img_in, int g_x[], int g_y[], int g[], int dir[]) {//float theta[]) {
#ifdef CLOCK
clock_t start = clock();
#endif
int w, h, x, y, max_x, max_y, n;
float g_div;
w = img_in->width;
h = img_in->height;
max_x = w - 1;
max_y = w * (h - 1);
n = 0;
for (y = w; y < max_y; y += w) {
for (x = 1; x < max_x; x++) {
g_x[n] = (10 * img_in->pixel_data[x + y + 1]
+ 3 * img_in->pixel_data[x + y - w + 1]
+ 3 * img_in->pixel_data[x + y + w + 1]
- 10 * img_in->pixel_data[x + y - 1]
- 3 * img_in->pixel_data[x + y - w - 1]
- 3 * img_in->pixel_data[x + y + w - 1]);
g_y[n] = 10 * img_in->pixel_data[x + y - w]
+ 3 * img_in->pixel_data[x + y - w + 1]
+ 3 * img_in->pixel_data[x + y - w - 1]
- 10 * img_in->pixel_data[x + y + w]
- 3 * img_in->pixel_data[x + y + w + 1]
- 3 * img_in->pixel_data[x + y + w - 1];
#ifndef ABS_APPROX
g[n] = sqrt(g_x[n] * g_x[n] + g_y[n] * g_y[n]);
#endif
#ifdef ABS_APPROX
g[n] = abs(g_x[n]) + abs(g_y[n]);
#endif
if (g_x[n] == 0) {
dir[n] = 2;
} else {
g_div = g_y[n] / (float) g_x[n];
if (g_div < 0) {
if (g_div < -2.41421356237) {
dir[n] = 0;
} else {
if (g_div < -0.414213562373) {
dir[n] = 1;
} else {
dir[n] = 2;
}
}
} else {
if (g_div > 2.41421356237) {
dir[n] = 0;
} else {
if (g_div > 0.414213562373) {
dir[n] = 3;
} else {
dir[n] = 2;
}
}
}
}
n++;
}
}
#ifdef CLOCK
printf("Calculate gradient Scharr - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
/*
NON_MAX_SUPPRESSION
using the estimates of the Gx and Gy image gradients and the edge direction angle determines whether the magnitude of the gradient assumes a local maximum in the gradient direction
if the rounded edge direction angle is 0 degrees, checks the north and south directions
if the rounded edge direction angle is 45 degrees, checks the northwest and southeast directions
if the rounded edge direction angle is 90 degrees, checks the east and west directions
if the rounded edge direction angle is 135 degrees, checks the northeast and southwest directions
*/
void non_max_suppression(struct image * img, int g[], int dir[]) {//float theta[]) {
#ifdef CLOCK
clock_t start = clock();
#endif
int w, h, x, y, max_x, max_y;
w = img->width;
h = img->height;
max_x = w;
max_y = w * h;
for (y = 0; y < max_y; y += w) {
for (x = 0; x < max_x; x++) {
switch (dir[x + y]) {
case 0:
if(x+y-w-1<0){
continue;
}
if (g[x + y] > g[x + y - w] && g[x + y] > g[x + y + w]) {
if (g[x + y] > 255) {
img->pixel_data[x + y] = 0xFF;
} else {
img->pixel_data[x + y] = g[x + y];
}
} else {
img->pixel_data[x + y] = 0x00;
}
break;
case 1:
if(x+y-w-1<0){
continue;
}
if (g[x + y] > g[x + y - w - 1] && g[x + y] > g[x + y + w + 1]) {
if (g[x + y] > 255) {
img->pixel_data[x + y] = 0xFF;
} else {
img->pixel_data[x + y] = g[x + y];
}
} else {
img->pixel_data[x + y] = 0x00;
}
break;
case 2:
if (g[x + y] > g[x + y - 1] && g[x + y] > g[x + y + 1]) {
if (g[x + y] > 255) {
img->pixel_data[x + y] = 0xFF;
} else {
img->pixel_data[x + y] = g[x + y];
}
} else {
img->pixel_data[x + y] = 0x00;
}
break;
case 3:
if(x+y-w-1<0){
continue;
}
if (g[x + y] > g[x + y - w + 1] && g[x + y] > g[x + y + w - 1]) {
if (g[x + y] > 255) {
img->pixel_data[x + y] = 0xFF;
} else {
img->pixel_data[x + y] = g[x + y];
}
} else {
img->pixel_data[x + y] = 0x00;
}
break;
default:
printf("ERROR - direction outside range 0 to 3");
break;
}
}
}
#ifdef CLOCK
printf("Non-maximum suppression - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
/*
ESTIMATE_THRESHOLD
estimates hysteresis threshold, assuming that the top X% (as defined by the HIGH_THRESHOLD_PERCENTAGE) of edge pixels with the greatest intesity are true edges
and that the low threshold is equal to the quantity of the high threshold plus the total number of 0s at the low end of the histogram divided by 2
*/
void estimate_threshold(struct image * img, int * high, int * low) {
#ifdef CLOCK
clock_t start = clock();
#endif
int i, max, pixels, high_cutoff;
int histogram[256];
max = img->width * img->height;
for (i = 0; i < 256; i++) {
histogram[i] = 0;
}
for (i = 0; i < max; i++) {
histogram[img->pixel_data[i]]++;
}
pixels = (max - histogram[0]) * HIGH_THRESHOLD_PERCENTAGE;
high_cutoff = 0;
i = 255;
while (high_cutoff < pixels) {
high_cutoff += histogram[i];
i--;
}
*high = i;
i = 1;
while (histogram[i] == 0) {
i++;
}
*low = (*high + i) * LOW_THRESHOLD_PERCENTAGE;
#ifdef PRINT_HISTOGRAM
for (i = 0; i < 256; i++) {
printf("i %d count %d\n", i, histogram[i]);
}
#endif
#ifdef CLOCK
printf("Estimate threshold - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
void hysteresis (int high, int low, struct image * img_in, struct image * img_out)
{
#ifdef CLOCK
clock_t start = clock();
#endif
int x, y, n, max;
max = img_in->width * img_in->height;
for (n = 0; n < max; n++) {
img_out->pixel_data[n] = 0x00;
}
for (y=0; y < img_out->height; y++) {
for (x=0; x < img_out->width; x++) {
if (img_in->pixel_data[y * img_out->width + x] >= high) {
trace (x, y, low, img_in, img_out);
}
}
}
#ifdef CLOCK
printf("Hysteresis - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
int trace(int x, int y, int low, struct image * img_in, struct image * img_out)
{
int y_off, x_off;//, flag;
if (img_out->pixel_data[y * img_out->width + x] == 0)
{
img_out->pixel_data[y * img_out->width + x] = 0xFF;
for (y_off = -1; y_off <=1; y_off++)
{
for(x_off = -1; x_off <= 1; x_off++)
{
if (!(y == 0 && x_off == 0) && range(img_in, x + x_off, y + y_off) && img_in->pixel_data[(y + y_off) * img_out->width + x + x_off] >= low) {
if (trace(x + x_off, y + y_off, low, img_in, img_out))
{
return(1);
}
}
}
}
return(1);
}
return(0);
}
int range(struct image * img, int x, int y)
{
if ((x < 0) || (x >= img->width)) {
return(0);
}
if ((y < 0) || (y >= img->height)) {
return(0);
}
return(1);
}
void dilate_1d_h(struct image * img, struct image * img_out) {
int x, y, offset, y_max;
y_max = img->height * (img->width - 2);
for (y = 2 * img->width; y < y_max; y += img->width) {
for (x = 2; x < img->width - 2; x++) {
offset = x + y;
img_out->pixel_data[offset] = max(max(max(max(img->pixel_data[offset-2], img->pixel_data[offset-1]), img->pixel_data[offset]), img->pixel_data[offset+1]), img->pixel_data[offset+2]);
}
}
}
void dilate_1d_v(struct image * img, struct image * img_out) {
int x, y, offset, y_max;
y_max = img->height * (img->width - 2);
for (y = 2 * img->width; y < y_max; y += img->width) {
for (x = 2; x < img->width - 2; x++) {
offset = x + y;
img_out->pixel_data[offset] = max(max(max(max(img->pixel_data[offset-2 * img->width], img->pixel_data[offset-img->width]), img->pixel_data[offset]), img->pixel_data[offset+img->width]), img->pixel_data[offset+2*img->width]);
}
}
}
void erode_1d_h(struct image * img, struct image * img_out) {
int x, y, offset, y_max;
y_max = img->height * (img->width - 2);
for (y = 2 * img->width; y < y_max; y += img->width) {
for (x = 2; x < img->width - 2; x++) {
offset = x + y;
img_out->pixel_data[offset] = min(min(min(min(img->pixel_data[offset-2], img->pixel_data[offset-1]), img->pixel_data[offset]), img->pixel_data[offset+1]), img->pixel_data[offset+2]);
}
}
}
void erode_1d_v(struct image * img, struct image * img_out) {
int x, y, offset, y_max;
y_max = img->height * (img->width - 2);
for (y = 2 * img->width; y < y_max; y += img->width) {
for (x = 2; x < img->width - 2; x++) {
offset = x + y;
img_out->pixel_data[offset] = min(min(min(min(img->pixel_data[offset-2 * img->width], img->pixel_data[offset-img->width]), img->pixel_data[offset]), img->pixel_data[offset+img->width]), img->pixel_data[offset+2*img->width]);
}
}
}
void erode(struct image * img_in, struct image * img_scratch, struct image * img_out) {
#ifdef CLOCK
clock_t start = clock();
#endif
erode_1d_h(img_in, img_scratch);
erode_1d_v(img_scratch, img_out);
#ifdef CLOCK
printf("Erosion - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
void dilate(struct image * img_in, struct image * img_scratch, struct image * img_out) {
#ifdef CLOCK
clock_t start = clock();
#endif
dilate_1d_h(img_in, img_scratch);
dilate_1d_v(img_scratch, img_out);
#ifdef CLOCK
printf("Dilation - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
void morph_open(struct image * img_in, struct image * img_scratch, struct image * img_scratch2, struct image * img_out) {
#ifdef CLOCK
clock_t start = clock();
#endif
erode(img_in, img_scratch, img_scratch2);
dilate(img_scratch2, img_scratch, img_out);
#ifdef CLOCK
printf("Morphological opening - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
void morph_close(struct image * img_in, struct image * img_scratch, struct image * img_scratch2, struct image * img_out) {
#ifdef CLOCK
clock_t start = clock();
#endif
dilate(img_in, img_scratch, img_scratch2);
erode(img_scratch2, img_scratch, img_out);
#ifdef CLOCK
printf("Morphological closing - time elapsed: %f\n", ((double)clock() - start) / CLOCKS_PER_SEC);
#endif
}
}