4.2 KiB
4.2 KiB
title, categories, series, tags, abbrlink, summary, date
| title | categories | series | tags | abbrlink | summary | date | ||
|---|---|---|---|---|---|---|---|---|
| opencv基础操作 |
|
opencv |
|
e8f95ead | 这篇文章介绍了使用C++和OpenCV库进行图像处理的基础操作,包括图片的读取与展示、像素的读取与修改、图像的基本变换(缩放、旋转、平移、翻转)、以及图像通道的分离与合并。文章详细讲解了每个操作的代码实现,并展示了如何通过OpenCV库提供的函数来完成这些任务。这对于初学者来说是非常有用的,因为它帮助他们理解如何使用OpenCV进行图像处理。 | 2026-03-15 09:56:51 |
这里用C++进行编程,发现菜鸟教程只有python的版本,那就记录一下。
图片读取与展示
// 读取图像
#include<opencv2/opencv.hpp>
#include<iostream>
using namespace std;
using namespace cv;
int main(){
Mat src = imread("../img/1.png");
imshow("input",src);
waitKey(0);
destroyAllWindows();
return 0;
}
图像基本操作
读取像素
需要用到三维向量数组Vect3b,这里需要注意的是,Opencv是BGR而不是我们常用的RGB。
// 读取像素
#include<opencv2/opencv.hpp>
#include<iostream>
using namespace std;
using namespace cv;
int main()
{
string image_path = "../img/1.png";
Mat image = imread(image_path);
if (image.empty()) {
cout << "错误:无法加载图像,请检查路径是否正确。" << endl;
return -1;
}
Vec3b pixel_value = image.at<Vec3b>(100, 150);
cout << "B: " << (int)pixel_value[0] << " "
<< "G: " << (int)pixel_value[1] << " "
<< "R: " << (int)pixel_value[2] << endl;
}
修改像素
// 修改像素
#include<opencv2/opencv.hpp>
#include<iostream>
using namespace std;
using namespace cv;
int main()
{
string image_path = "../img/1.png";
Mat image = imread(image_path);
Mat result = image.clone();
if (image.empty()) {
cout << "错误:无法加载图像,请检查路径是否正确。" << endl;
return -1;
}
Rect roi_rect(0, 0, 100, 100);
Mat roi = result(roi_rect);
roi.setTo(Scalar(0, 255, 0));
imshow("Original (Unchanged)", image);
imshow("Modified Copy", result);
waitKey(0);
return 0;
}
#include <opencv2/opencv.hpp>
#include <iostream>
int main() {
// 读取图像
cv::Mat img = cv::imread("../img/1.png");
if (img.empty()) {
std::cout << "无法读取图像" << std::endl;
return -1;
}
// 1. 缩放
cv::Mat resized_img;
cv::resize(img, resized_img, cv::Size(200, 200));
cv::imshow("resized_img", resized_img);
// 2. 旋转
cv::Mat rotated_img, M_rot;
cv::Point2f center(img.cols / 2.0, img.rows / 2.0);
M_rot = cv::getRotationMatrix2D(center, 45, 1.0);
cv::warpAffine(img, rotated_img, M_rot, img.size());
cv::imshow("rotated_img", rotated_img);
// 3. 平移
cv::Mat translated_img;
cv::Mat M_trans = (cv::Mat_<float>(2, 3) << 1, 0, 100, 0, 1, 50);
cv::warpAffine(img, translated_img, M_trans, img.size());
cv::imshow("translated_img", translated_img);
// 4. 翻转
cv::Mat flipped_img;
cv::flip(img, flipped_img, 1);
cv::imshow("flipped", flipped_img);
// 显示结果
cv::imshow("Original", img);
cv::waitKey(0);
return 0;
}
// 图像通道分离与合并
#include<opencv2/opencv.hpp>
#include<iostream>
using namespace std;
using namespace cv;
int main()
{
string image_path = "../img/1.png";
Mat image = imread(image_path);
Mat result = image.clone();
// 定义向量数组接收通道
vector<Mat> channels;
// 拆分
split(result,channels);
Mat b = channels[0];
Mat g = channels[1];
Mat r = channels[2];
imshow("Blue Channel (Grayscale)", channels[0]);
imshow("Green Channel (Grayscale)", channels[1]);
imshow("Red Channel (Grayscale)", channels[2]);
// merge
Mat merged_img;
vector<cv::Mat> channels_to_merge;
channels_to_merge.push_back(b);
channels_to_merge.push_back(g);
channels_to_merge.push_back(r);
merge(channels_to_merge, merged_img);
imshow("merged",merged_img);
waitKey(0);
return(0);
}