• 无缝融合seamlessClone(),调试颜色colorChange(),消除高亮illuminationChange(),纹理扁平化textureFlattening()(OpenCV案例源码cloning_demo.cpp解读)


    有所更改,参数不求完备,但求实用。源码参考D:sourceopencv-3.4.9samplescppcloning_demo.cpp

    图片下载地址 https://github.com/opencv/opencv_extra

    此案例图片具体位置 opencv_extra-master estdatacvcloning。把cloning文件夹放到自己的工程目录下。

    【知识点1】

    把一幅图无缝融合到另一幅图里,主要是seamlessClone() 的使用。

    seamlessClone( InputArray src, InputArray dst, InputArray mask, Point p, OutputArray blend, int flags);

    注意需要三幅图合为一幅图,src与mask抠图(逻辑与,尺寸一致),把抠出的图融合到dst中的p位置处(抠出的图尺寸≤dst图)。p位置也是抠出的图的中心。

    3种融合模式flags:NORMAL_CLONE = 1,MIXED_CLONE  = 2,MONOCHROME_TRANSFER = 3

    #include<opencv2opencv.hpp>
    #include<iostream>
    
    using namespace cv;
    using namespace std;
    
    int main()
    {
        string folder = "cloning/Normal_Cloning/"; //可更换Mixed_Cloning,Monochrome_Transfer目录
        string original_path1 = samples::findFile(folder + "source1.png");
        string original_path2 = samples::findFile(folder + "destination1.png");
        string original_path3 = samples::findFile(folder + "mask.png");
    
        Mat source = imread(original_path1, IMREAD_COLOR);
        Mat destination = imread(original_path2, IMREAD_COLOR);
        Mat mask = imread(original_path3, IMREAD_COLOR);
    
        Mat result;
        Point p;
        p.x = destination.size().width / 2;
        p.y = destination.size().height / 2;
    
        seamlessClone(source, destination, mask, p, result, NORMAL_CLONE); //可更换MIXED_CLONE,MONOCHROME_TRANSFER
    
        imshow("Output", result);
        imwrite("cloned.png", result);
    
        waitKey(0);
        return 0;
    }

    【知识点2】

    对感兴趣区域进行颜色调整。如下图,花朵更鲜艳。主要是colorChange()函数的使用。

    #include<opencv2opencv.hpp>
    #include<iostream>
    
    using namespace cv;
    using namespace std;
    
    int main()
    {
        string folder = "cloning/color_change/";
        string original_path1 = samples::findFile(folder + "source1.png");
        string original_path2 = samples::findFile(folder + "mask.png");
    
        Mat source = imread(original_path1, IMREAD_COLOR);
        Mat mask = imread(original_path2, IMREAD_COLOR);
    
        Mat result;
        colorChange(source, mask, result, 1.5, .5, .5); //mask定位source中的roi区域,调整该区域颜色r,g,b
    
        imshow("Output", result);
        imwrite("cloned.png", result);
    
        waitKey(0);
        return 0;
    }

    【知识点3】

    消除高亮区域,illuminationChange()函数的使用。alpha,beta两个参数共同决定消除高光后图像的模糊程度(范围0~2,0比较清晰,2比较模糊)

    #include<opencv2opencv.hpp>
    #include<iostream>
    
    using namespace cv;
    using namespace std;
    
    int main()
    {
        string folder = "cloning/Illumination_Change/";
        string original_path1 = samples::findFile(folder + "source1.png");
        string original_path2 = samples::findFile(folder + "mask.png");
    
        Mat source = imread(original_path1, IMREAD_COLOR);
        Mat mask = imread(original_path2, IMREAD_COLOR);
    
        Mat result;
    
        illuminationChange(source, mask, result, 0.2f, 0.4f); //消除source中mask锁定的高亮区域,后两个参数0-2调整
    
        imshow("Output", result);
        imwrite("cloned.png", result);
    
        waitKey(0);
        return 0;
    }

    【知识点4】

    纹理扁平化,边缘检测器选取的边缘越少(选择性越强),边缘映射就越稀疏,扁平化效果就越明显。textureFlattening()函数的使用。

    #include<opencv2opencv.hpp>
    #include<iostream>
    
    using namespace cv;
    using namespace std;
    
    int main()
    {
        string folder = "cloning/Texture_Flattening/";
        string original_path1 = samples::findFile(folder + "source1.png");
        string original_path2 = samples::findFile(folder + "mask.png");
    
        Mat source = imread(original_path1, IMREAD_COLOR);
        Mat mask = imread(original_path2, IMREAD_COLOR);
    
        Mat result;
    
        textureFlattening(source, mask, result, 30, 45, 3); //对mask锁定的source中的区域进行纹理扁平化,低阈值,高阈值,核尺寸
    
        imshow("Output", result);
        imwrite("cloned.png", result);
    
        waitKey(0);
        return 0;
    }

     【原理参考】

    https://blog.csdn.net/zhaoyin214/article/details/88196575

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  • 原文地址:https://www.cnblogs.com/xixixing/p/12335317.html
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