本文首发于个人博客https://kezunlin.me/post/61d55ab4/,欢迎阅读! opencv mat for loop Series Part 1: compile opencv on ubuntu 16.04 Part 2: compile opencv with CUDA support on windows 10 Part 3: opencv mat for loop Part 4: speed up opencv image processing with openm
convert Matlab matrix to OpenCV Mat. Support CV_32FC3 only currently. The Code int matlab2opencv(cv::Mat &img, const mxArray *&mat){ mwSize num_dims = mxGetNumberOfDimensions(mat); const mwSize *dims = mxGetDimensions(mat); //for (int i = 0; i <
比如a[]={2,4,5,6,7},得出的两组数{2,4,6}和{5,7},abs(sum(a1)-sum(a2))=0: 比如{2,5,6,10},abs(sum(2,10)-sum(5,6))=1,所以得出的两组数分别为{2,10}和{5,6}. vector<int> vct; int last = INT_MAX; int halfOfSum(int* arr, int len) { int sum = 0; for (int i = 0; i < len; ++i) { sum
参考博客: OpenCv中cv::Mat和IplImage,CvMat之间的转换 Mat - 基本图像容器 Mat类型较CvMat和IplImage有更强的矩阵运算能力,支持常见的矩阵运算(参照Matlab中的各种矩阵运算),所以将IplImage类型和CvMat类型转换为Mat类型更易于数据处理. 关于 Mat ,首先要知道的是你不必再手动地(1)为其开辟空间(2)在不需要时立即将空间释放.但手动地做还是可以的:大多数OpenCV函数仍会手动地为输出数据开辟空间.当传递一个已经存在的 Mat
为了提升自己对Opencv中Mat数据类型的熟悉和掌握程度,自己尝试着写了一下Laplace图像锐化函数,一路坎坷,踩坑不断.现将代码分享如下: #include <opencv2/opencv.hpp> #include <iostream> using namespace std; using namespace cv; //Laplace滤波锐化图像 void myLaplace(Mat Src, Mat Tem, Mat Dst) { int SrcH = Src.rows