opencv对手写数字进行无黏连切割

时间:2023-03-10 00:39:44
opencv对手写数字进行无黏连切割
//src:待分割的二值图,最大值为255
//segMat:分割好的每个图片
//算法:判断连通域,有几个连通域就会分割成几个子图片
//用途:手写数字识别中进行无黏连数字的分割
void getConnectedDomain(cv::Mat &src, vector<cv::Mat>& segMat)//segMat为最终结果,存放分割好的每个数字
{
int img_row = src.rows;
int img_col = src.cols;
cv::Mat flag = cv::Mat::zeros(cv::Size(img_col, img_row), CV_8UC1);//标志矩阵,为0则当前像素点未访问过 for (int i = ; i < img_row; i++)
{
for (int j = ; j < img_col; j++)
{
if (src.ptr<uchar>(i)[j] == && flag.ptr<uchar>(i)[j] == )
{
cv::Mat subMat = cv::Mat::zeros(cv::Size(img_col, img_row), CV_8UC1);//表明子图
stack<cv::Point2f> cd;
cd.push(cv::Point2f(j, i));
flag.ptr<uchar>(i)[j] = ;
subMat.ptr<uchar>(i)[j] = ; while (!cd.empty())
{
cv::Point2f tmp = cd.top(); cd.pop();
cv::Point2f p[];//邻域像素点,这里用的四邻域
p[] = cv::Point2f(tmp.x - > ? tmp.x - : , tmp.y);
p[] = cv::Point2f(tmp.x + < img_col - ? tmp.x + : img_row - , tmp.y);
p[] = cv::Point2f(tmp.x, tmp.y - > ? tmp.y - : );
p[] = cv::Point2f(tmp.x, tmp.y + < img_row - ? tmp.y + : img_row - );
for (int m = ; m < ; m++)
{
int x = p[m].y;
int y = p[m].x;
if (src.ptr<uchar>(x)[y] == && flag.ptr<uchar>(x)[y] == )//如果未访问,则入栈,并标记访问过该点
{
cd.push(p[m]);
flag.ptr<uchar>(x)[y] = ;
subMat.ptr<uchar>(x)[y] = ;
}
}
}
segMat.push_back(subMat);
}
}
}
}