2019-04-05 07:11:42 +08:00
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#include "opencv2/core.hpp"
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#include "opencv2/highgui.hpp"
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#include "opencv2/imgcodecs.hpp"
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#include "opencv2/imgproc.hpp"
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#include "opencv2/ml.hpp"
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#include <algorithm>
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#include <iostream>
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#include <vector>
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using namespace cv;
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using namespace std;
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const int SZ = 20; // size of each digit is SZ x SZ
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const int CLASS_N = 10;
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const char* DIGITS_FN = "digits.png";
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2020-02-23 21:38:04 +08:00
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static void help(char** argv)
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2019-04-05 07:11:42 +08:00
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{
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cout <<
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"\n"
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"SVM and KNearest digit recognition.\n"
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"\n"
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"Sample loads a dataset of handwritten digits from 'digits.png'.\n"
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"Then it trains a SVM and KNearest classifiers on it and evaluates\n"
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"their accuracy.\n"
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"\n"
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"Following preprocessing is applied to the dataset:\n"
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" - Moment-based image deskew (see deskew())\n"
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" - Digit images are split into 4 10x10 cells and 16-bin\n"
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" histogram of oriented gradients is computed for each\n"
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" cell\n"
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" - Transform histograms to space with Hellinger metric (see [1] (RootSIFT))\n"
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"\n"
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"\n"
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"[1] R. Arandjelovic, A. Zisserman\n"
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" \"Three things everyone should know to improve object retrieval\"\n"
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" http://www.robots.ox.ac.uk/~vgg/publications/2012/Arandjelovic12/arandjelovic12.pdf\n"
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"\n"
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"Usage:\n"
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2020-02-23 21:38:04 +08:00
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<< argv[0] << endl;
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2019-04-05 07:11:42 +08:00
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}
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static void split2d(const Mat& image, const Size cell_size, vector<Mat>& cells)
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{
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int height = image.rows;
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int width = image.cols;
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int sx = cell_size.width;
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int sy = cell_size.height;
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cells.clear();
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for (int i = 0; i < height; i += sy)
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{
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for (int j = 0; j < width; j += sx)
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{
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cells.push_back(image(Rect(j, i, sx, sy)));
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}
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}
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}
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static void load_digits(const char* fn, vector<Mat>& digits, vector<int>& labels)
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{
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digits.clear();
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labels.clear();
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String filename = samples::findFile(fn);
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cout << "Loading " << filename << " ..." << endl;
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Mat digits_img = imread(filename, IMREAD_GRAYSCALE);
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split2d(digits_img, Size(SZ, SZ), digits);
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for (int i = 0; i < CLASS_N; i++)
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{
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for (size_t j = 0; j < digits.size() / CLASS_N; j++)
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{
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labels.push_back(i);
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}
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}
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}
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static void deskew(const Mat& img, Mat& deskewed_img)
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{
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Moments m = moments(img);
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if (abs(m.mu02) < 0.01)
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{
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deskewed_img = img.clone();
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return;
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}
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float skew = (float)(m.mu11 / m.mu02);
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float M_vals[2][3] = {{1, skew, -0.5f * SZ * skew}, {0, 1, 0}};
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2023-09-21 23:24:38 +08:00
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Mat M(Size(3, 2), CV_32F, &M_vals[0][0]);
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2019-04-05 07:11:42 +08:00
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warpAffine(img, deskewed_img, M, Size(SZ, SZ), WARP_INVERSE_MAP | INTER_LINEAR);
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}
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static void mosaic(const int width, const vector<Mat>& images, Mat& grid)
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{
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int mat_width = SZ * width;
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int mat_height = SZ * (int)ceil((double)images.size() / width);
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if (!images.empty())
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{
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grid = Mat(Size(mat_width, mat_height), images[0].type());
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for (size_t i = 0; i < images.size(); i++)
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{
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Mat location_on_grid = grid(Rect(SZ * ((int)i % width), SZ * ((int)i / width), SZ, SZ));
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images[i].copyTo(location_on_grid);
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}
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}
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}
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static void evaluate_model(const vector<float>& predictions, const vector<Mat>& digits, const vector<int>& labels, Mat& mos)
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{
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double err = 0;
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for (size_t i = 0; i < predictions.size(); i++)
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{
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if ((int)predictions[i] != labels[i])
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{
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err++;
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}
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}
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err /= predictions.size();
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2021-04-21 14:08:52 +08:00
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cout << cv::format("error: %.2f %%", err * 100) << endl;
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2019-04-05 07:11:42 +08:00
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int confusion[10][10] = {};
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for (size_t i = 0; i < labels.size(); i++)
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{
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confusion[labels[i]][(int)predictions[i]]++;
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}
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cout << "confusion matrix:" << endl;
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for (int i = 0; i < 10; i++)
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{
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for (int j = 0; j < 10; j++)
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{
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2021-04-21 14:08:52 +08:00
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cout << cv::format("%2d ", confusion[i][j]);
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2019-04-05 07:11:42 +08:00
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}
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cout << endl;
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}
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cout << endl;
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vector<Mat> vis;
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for (size_t i = 0; i < digits.size(); i++)
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{
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Mat img;
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cvtColor(digits[i], img, COLOR_GRAY2BGR);
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if ((int)predictions[i] != labels[i])
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{
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for (int j = 0; j < img.rows; j++)
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{
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for (int k = 0; k < img.cols; k++)
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{
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img.at<Vec3b>(j, k)[0] = 0;
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img.at<Vec3b>(j, k)[1] = 0;
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}
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}
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}
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vis.push_back(img);
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}
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mosaic(25, vis, mos);
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}
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static void bincount(const Mat& x, const Mat& weights, const int min_length, vector<double>& bins)
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{
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double max_x_val = 0;
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minMaxLoc(x, NULL, &max_x_val);
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bins = vector<double>(max((int)max_x_val, min_length));
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for (int i = 0; i < x.rows; i++)
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{
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for (int j = 0; j < x.cols; j++)
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{
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bins[x.at<int>(i, j)] += weights.at<float>(i, j);
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}
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}
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}
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static void preprocess_hog(const vector<Mat>& digits, Mat& hog)
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{
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int bin_n = 16;
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int half_cell = SZ / 2;
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double eps = 1e-7;
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hog = Mat(Size(4 * bin_n, (int)digits.size()), CV_32F);
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for (size_t img_index = 0; img_index < digits.size(); img_index++)
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{
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Mat gx;
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Sobel(digits[img_index], gx, CV_32F, 1, 0);
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Mat gy;
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Sobel(digits[img_index], gy, CV_32F, 0, 1);
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Mat mag;
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Mat ang;
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cartToPolar(gx, gy, mag, ang);
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Mat bin(ang.size(), CV_32S);
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for (int i = 0; i < ang.rows; i++)
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{
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for (int j = 0; j < ang.cols; j++)
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{
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bin.at<int>(i, j) = (int)(bin_n * ang.at<float>(i, j) / (2 * CV_PI));
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}
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}
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Mat bin_cells[] = {
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bin(Rect(0, 0, half_cell, half_cell)),
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bin(Rect(half_cell, 0, half_cell, half_cell)),
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bin(Rect(0, half_cell, half_cell, half_cell)),
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bin(Rect(half_cell, half_cell, half_cell, half_cell))
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};
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Mat mag_cells[] = {
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mag(Rect(0, 0, half_cell, half_cell)),
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mag(Rect(half_cell, 0, half_cell, half_cell)),
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mag(Rect(0, half_cell, half_cell, half_cell)),
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mag(Rect(half_cell, half_cell, half_cell, half_cell))
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};
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vector<double> hist;
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hist.reserve(4 * bin_n);
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for (int i = 0; i < 4; i++)
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{
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vector<double> partial_hist;
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bincount(bin_cells[i], mag_cells[i], bin_n, partial_hist);
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hist.insert(hist.end(), partial_hist.begin(), partial_hist.end());
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}
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// transform to Hellinger kernel
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double sum = 0;
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for (size_t i = 0; i < hist.size(); i++)
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{
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sum += hist[i];
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}
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for (size_t i = 0; i < hist.size(); i++)
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{
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hist[i] /= sum + eps;
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hist[i] = sqrt(hist[i]);
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}
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double hist_norm = norm(hist);
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for (size_t i = 0; i < hist.size(); i++)
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{
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hog.at<float>((int)img_index, (int)i) = (float)(hist[i] / (hist_norm + eps));
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}
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}
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}
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static void shuffle(vector<Mat>& digits, vector<int>& labels)
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{
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vector<int> shuffled_indexes(digits.size());
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for (size_t i = 0; i < digits.size(); i++)
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{
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shuffled_indexes[i] = (int)i;
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}
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randShuffle(shuffled_indexes);
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vector<Mat> shuffled_digits(digits.size());
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vector<int> shuffled_labels(labels.size());
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for (size_t i = 0; i < shuffled_indexes.size(); i++)
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{
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shuffled_digits[shuffled_indexes[i]] = digits[i];
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shuffled_labels[shuffled_indexes[i]] = labels[i];
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}
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digits = shuffled_digits;
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labels = shuffled_labels;
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}
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2020-02-23 21:38:04 +08:00
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int main(int /* argc */, char* argv[])
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2019-04-05 07:11:42 +08:00
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{
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2020-02-23 21:38:04 +08:00
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help(argv);
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2019-04-05 07:11:42 +08:00
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vector<Mat> digits;
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vector<int> labels;
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load_digits(DIGITS_FN, digits, labels);
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cout << "preprocessing..." << endl;
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// shuffle digits
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shuffle(digits, labels);
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vector<Mat> digits2;
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for (size_t i = 0; i < digits.size(); i++)
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{
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Mat deskewed_digit;
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deskew(digits[i], deskewed_digit);
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digits2.push_back(deskewed_digit);
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}
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Mat samples;
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preprocess_hog(digits2, samples);
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int train_n = (int)(0.9 * samples.rows);
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Mat test_set;
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vector<Mat> digits_test(digits2.begin() + train_n, digits2.end());
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mosaic(25, digits_test, test_set);
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imshow("test set", test_set);
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Mat samples_train = samples(Rect(0, 0, samples.cols, train_n));
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Mat samples_test = samples(Rect(0, train_n, samples.cols, samples.rows - train_n));
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vector<int> labels_train(labels.begin(), labels.begin() + train_n);
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vector<int> labels_test(labels.begin() + train_n, labels.end());
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Ptr<ml::KNearest> k_nearest;
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Ptr<ml::SVM> svm;
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vector<float> predictions;
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Mat vis;
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cout << "training KNearest..." << endl;
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k_nearest = ml::KNearest::create();
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k_nearest->train(samples_train, ml::ROW_SAMPLE, labels_train);
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// predict digits with KNearest
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k_nearest->findNearest(samples_test, 4, predictions);
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evaluate_model(predictions, digits_test, labels_test, vis);
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imshow("KNearest test", vis);
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k_nearest.release();
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cout << "training SVM..." << endl;
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svm = ml::SVM::create();
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svm->setGamma(5.383);
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svm->setC(2.67);
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svm->setKernel(ml::SVM::RBF);
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svm->setType(ml::SVM::C_SVC);
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svm->train(samples_train, ml::ROW_SAMPLE, labels_train);
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// predict digits with SVM
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svm->predict(samples_test, predictions);
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evaluate_model(predictions, digits_test, labels_test, vis);
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imshow("SVM test", vis);
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cout << "Saving SVM as \"digits_svm.yml\"..." << endl;
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svm->save("digits_svm.yml");
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svm.release();
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waitKey();
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return 0;
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}
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