Rol*_*asr 3 c++ opencv svm computer-vision pca
我在使用Mat和PCA类使用最新的C++语法时遇到了PCA和Eigenfaces的问题.较旧的C语法将IplImage*数组作为参数来执行其处理,而当前API仅采用由Column或Row格式化的Mat.我采用了Row方法,使用reshape函数来拟合我的图像矩阵以适合单行.我最终想要获取这些数据然后使用SVM算法来执行检测,但是当我这样做时,我的所有数据都只是一个0流.有人可以帮帮我吗?我究竟做错了什么?谢谢!
我看到了这个问题并且它有些相关,但我不确定解决方案是什么.
这基本上就是我所拥有的:
vector<Mat> images; //This variable will be loaded with a set of images to perform PCA on.
Mat values(images.size(), 1, CV_32SC1); //Values are the corresponding values to each of my images.
int nEigens = images.size() - 1; //Number of Eigen Vectors.
//Load the images into a Matrix
Mat desc_mat(images.size(), images[0].rows * images[0].cols, CV_32FC1);
for (int i=0; i<images.size(); i++) {
desc_mat.row(i) = images[i].reshape(1, 1);
}
Mat average;
PCA pca(desc_mat, average, CV_PCA_DATA_AS_ROW, nEigens);
Mat data(desc_mat.rows, nEigens, CV_32FC1); //This Mat will contain all the Eigenfaces that will be used later with SVM for detection
//Project the images onto the PCA subspace
for(int i=0; i<images.size(); i++) {
Mat projectedMat(1, nEigens, CV_32FC1);
pca.project(desc_mat.row(i), projectedMat);
data.row(i) = projectedMat.row(0);
}
CvMat d1 = (CvMat)data;
CvMat d2 = (CvMat)values;
CvSVM svm;
svm.train(&d1, &d2);
svm.save("svmdata.xml");
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etarion说的是正确的.
要复制列或行,您必须始终写:
Mat B = mat.col(i);
A.copyTo(B);
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以下程序显示了如何在OpenCV中执行PCA.它将显示平均图像和前三个特征脸.我在那里使用的图像可以从http://www.cl.cam.ac.uk/research/dtg/attarchive/facedatabase.html获得:
#include "cv.h"
#include "highgui.h"
using namespace std;
using namespace cv;
Mat normalize(const Mat& src) {
Mat srcnorm;
normalize(src, srcnorm, 0, 255, NORM_MINMAX, CV_8UC1);
return srcnorm;
}
int main(int argc, char *argv[]) {
vector<Mat> db;
// load greyscale images (these are from http://www.cl.cam.ac.uk/research/dtg/attarchive/facedatabase.html)
db.push_back(imread("s1/1.pgm",0));
db.push_back(imread("s1/2.pgm",0));
db.push_back(imread("s1/3.pgm",0));
db.push_back(imread("s2/1.pgm",0));
db.push_back(imread("s2/2.pgm",0));
db.push_back(imread("s2/3.pgm",0));
db.push_back(imread("s3/1.pgm",0));
db.push_back(imread("s3/2.pgm",0));
db.push_back(imread("s3/3.pgm",0));
db.push_back(imread("s4/1.pgm",0));
db.push_back(imread("s4/2.pgm",0));
db.push_back(imread("s4/3.pgm",0));
int total = db[0].rows * db[0].cols;
// build matrix (column)
Mat mat(total, db.size(), CV_32FC1);
for(int i = 0; i < db.size(); i++) {
Mat X = mat.col(i);
db[i].reshape(1, total).col(0).convertTo(X, CV_32FC1, 1/255.);
}
// Change to the number of principal components you want:
int numPrincipalComponents = 12;
// Do the PCA:
PCA pca(mat, Mat(), CV_PCA_DATA_AS_COL, numPrincipalComponents);
// Create the Windows:
namedWindow("avg", 1);
namedWindow("pc1", 1);
namedWindow("pc2", 1);
namedWindow("pc3", 1);
// Mean face:
imshow("avg", pca.mean.reshape(1, db[0].rows));
// First three eigenfaces:
imshow("pc1", normalize(pca.eigenvectors.row(0)).reshape(1, db[0].rows));
imshow("pc2", normalize(pca.eigenvectors.row(1)).reshape(1, db[0].rows));
imshow("pc3", normalize(pca.eigenvectors.row(2)).reshape(1, db[0].rows));
// Show the windows:
waitKey(0);
}
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如果你想逐行构建矩阵(比如上面的原始问题),请改用:
// build matrix
Mat mat(db.size(), total, CV_32FC1);
for(int i = 0; i < db.size(); i++) {
Mat X = mat.row(i);
db[i].reshape(1, 1).row(0).convertTo(X, CV_32FC1, 1/255.);
}
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并将PCA中的标志设置为:
CV_PCA_DATA_AS_ROW
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关于机器学习.我使用OpenCV C++ API编写了一个关于机器学习的文档,其中包含大多数分类器的示例,包括支持向量机.也许你可以在那里得到一些灵感:http://www.bytefish.de/pdf/machinelearning.pdf.
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