依据矩阵的二维相关系数进行OCR识别

时间:2023-03-09 23:07:16
依据矩阵的二维相关系数进行OCR识别

我想通过简单的模板匹配来进行图像识别。

把预处理好的字符图片,分别与A到Z的样本图片进行模板匹配。

结果最大的表明相关性最大,就能够识别字符图片了。

在实际应用中。我用了openCV的matchTemplate()函数,可是未达到我想要点的效果。

matchTemplate()的功能是在图像中搜索出指定的模板,假设模板是从待搜索的图像中截取出来的,会有非常好的效果。可是假设模板不是待搜素图像的一部分,似乎达不到我想要的效果。

在尝试了matlab的corr2()后。发现corr2能非常好的解决我的问题。

依据矩阵的二维相关系数进行OCR识别

double Card::corr2(Mat matA, Mat matB){
//计算两个同样大小矩阵的二维相关系数
double corr2 = 0; double Amean2 = 0;
double Bmean2 = 0;
for (int m = 0; m < matA.rows; m++) {
uchar* dataA = matA.ptr<uchar>(m);
uchar* dataB = matB.ptr<uchar>(m);
for (int n = 0; n < matA.cols;n++) {
Amean2 = Amean2 + dataA[n];
Bmean2 = Bmean2 + dataB[n];
}
}
Amean2 = Amean2 / (matA.rows * matA.cols);
Bmean2 = Bmean2 / (matB.rows * matB.cols); double Cov = 0;
double Astd = 0;
double Bstd = 0;
for (int m = 0; m < matA.rows; m++) {
uchar* dataA = matA.ptr<uchar>(m);
uchar* dataB = matB.ptr<uchar>(m);
for (int n = 0; n < matA.cols;n++) {
//协方差
Cov = Cov + (dataA[n] - Amean2) * (dataB[n] - Bmean2);
//A的方差
Astd = Astd + (dataA[n] - Amean2) * (dataA[n] - Amean2);
//B的方差
Bstd = Bstd + (dataB[n] - Bmean2) * (dataB[n] - Bmean2);
}
}
corr2 = Cov / (sqrt(Astd * Bstd)); return corr2;
}

//待搜索图像
Mat srcImage = imread("M:/图像处理实验/验证码/byx001.bmp",1);
Mat resizeMat = Mat::zeros(25, 25, CV_8UC3);
//缩放为25*25的矩阵。由于要相关匹配的模板大小为25*25
resize(srcImage,resizeMat,resizeMat.size()); //相关匹配
double ccorrVal[26] = {0}; double max = 0;
int count = 0;
for (int m = 0; m < 26; m++){
char recogPath[100] = {1};
strcpy(recogPath,"M://图像处理实验//验证码//大写字母//");
char num[2] = {1};
num[0] = 65 + m;
strcat(recogPath, num);
strcat(recogPath,".bmp"); Mat img_display;
resizeMat.copyTo( img_display );
Mat std = imread(recogPath,0); Mat resizeMatSTD = Mat::zeros(25, 25, CV_8UC3);
resize(std,resizeMatSTD,resizeMatSTD.size()); adaptiveThreshold(resizeMatSTD ,resizeMatSTD ,255 ,ADAPTIVE_THRESH_MEAN_C ,THRESH_BINARY,5,1); corr2Val[m] = corr2(resizeMatSTD,img_display); if (max <= corr2Val[m]){
max = corr2Val[m];
count = m;
}
}
char pathname[100]={1};
strcpy(pathname,"M://图像处理实验//验证码//test//字符_");
char num[10];
_itoa(i, num, 10);
strcat(pathname, num); char C[2] = {1};
C[0] = 65 + count;
strcat(pathname, C);
strcat(pathname,".bmp");
imwrite(pathname, resizeMat);

字符模板:

依据矩阵的二维相关系数进行OCR识别

识别结果输出:

依据矩阵的二维相关系数进行OCR识别