Created
March 16, 2016 18:38
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{ | |
//http://docs.opencv.org/3.1.0/d1/dee/tutorial_introduction_to_pca.html#gsc.tab=0 | |
//Construct a buffer used by the pca analysis | |
int sz = static_cast<int>(pts.size()); | |
Mat data_pts = Mat(sz, 2, CV_64FC1); | |
for (int i = 0; i < data_pts.rows; ++i) | |
{ | |
data_pts.at<double>(i, 0) = pts[i].x; | |
data_pts.at<double>(i, 1) = pts[i].y; | |
} | |
//Perform PCA analysis | |
PCA pca_analysis(data_pts, Mat(), CV_PCA_DATA_AS_ROW); | |
//Store the center of the object | |
cv::Point cntr = cv::Point(static_cast<int>(pca_analysis.mean.at<double>(0, 0)), | |
static_cast<int>(pca_analysis.mean.at<double>(0, 1))); | |
//Store the eigenvalues and eigenvectors | |
vector<Point2d> eigen_vecs(2); | |
vector<double> eigen_val(2); | |
for (int i = 0; i < 2; ++i) | |
{ | |
eigen_vecs[i] = Point2d(pca_analysis.eigenvectors.at<double>(i, 0), | |
pca_analysis.eigenvectors.at<double>(i, 1)); | |
eigen_val[i] = pca_analysis.eigenvalues.at<double>(0, i); | |
} | |
cv::Point p1 = cntr + 0.02 * cv::Point(static_cast<int>(eigen_vecs[0].x * eigen_val[0]), static_cast<int>(eigen_vecs[0].y * eigen_val[0])); | |
cv::Point p2 = cntr - 0.02 * cv::Point(static_cast<int>(eigen_vecs[1].x * eigen_val[1]), static_cast<int>(eigen_vecs[1].y * eigen_val[1])); | |
orientation_angle = atan2(eigen_vecs[0].y, eigen_vecs[0].x); // orientation in radians | |
orientation_cntr = toOf(cntr); | |
eigenPoint_a = toOf(p1); | |
eigenPoint_b = toOf(p2); | |
// return angle; | |
static float temp_array[8]; | |
temp_array[0] = eigen_vecs[0].x; | |
temp_array[1] = eigen_vecs[0].y; | |
temp_array[2] = eigen_vecs[1].x; | |
temp_array[3] = eigen_vecs[1].y; | |
temp_array[4] = eigen_val[0]; | |
temp_array[5] = eigen_val[1]; | |
temp_array[6] = static_cast<int>(pca_analysis.mean.at<double>(0, 0)); //center x | |
temp_array[7] = static_cast<int>(pca_analysis.mean.at<double>(0, 1)); //center y | |
return temp_array; | |
} |
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