• 【OpenCV】特征检测器 FeatureDetector


    《SIFT原理与源码分析》系列文章索引:http://www.cnblogs.com/tianyalu/p/5467813.html

    OpenCV提供FeatureDetector实现特征检测及匹配

    class CV_EXPORTS FeatureDetector
    {
    public:
        virtual ~FeatureDetector();
        void detect( const Mat& image, vector<KeyPoint>& keypoints,
            const Mat& mask=Mat() ) const;
        void detect( const vector<Mat>& images,
            vector<vector<KeyPoint> >& keypoints,
            const vector<Mat>& masks=vector<Mat>() ) const;
        virtual void read(const FileNode&);
        virtual void write(FileStorage&) const;
        static Ptr<FeatureDetector> create( const string& detectorType );
    protected:
        ...
    };

    FeatureDetetor是虚类,通过定义FeatureDetector的对象可以使用多种特征检测方法。通过create()函数调用:

    Ptr<FeatureDetector> FeatureDetector::create(const string& detectorType);

    OpenCV 2.4.3提供了10种特征检测方法:

    • "FAST" – FastFeatureDetector
    • "STAR" – StarFeatureDetector
    • "SIFT" – SIFT (nonfree module)
    • "SURF" – SURF (nonfree module)
    • "ORB" – ORB
    • "MSER" – MSER
    • "GFTT" – GoodFeaturesToTrackDetector
    • "HARRIS" – GoodFeaturesToTrackDetector with Harris detector enabled
    • "Dense" – DenseFeatureDetector
    • "SimpleBlob" – SimpleBlobDetector
    图片中的特征大体可分为三种:点特征、线特征、块特征。
    FAST算法是Rosten提出的一种快速提取的点特征[1],Harris与GFTT也是点特征,更具体来说是角点特征(参考这里)。
    SimpleBlob是简单块特征,可以通过设置SimpleBlobDetector的参数决定提取图像块的主要性质,提供5种:
    颜色 By color、面积 By area、圆形度 By circularity、最大inertia (不知道怎么翻译)与最小inertia的比例 By ratio of the minimum inertia to maximum inertia、以及凸性 By convexity.
    最常用的当属SIFT,尺度不变特征匹配算法(参考这里);以及后来发展起来的SURF,都可以看做较为复杂的块特征。这两个算法在OpenCV nonfree的模块里面,需要在附件引用项中添加opencv_nonfree243.lib,同时在代码中加入:
    initModule_nonfree();

    至于其他几种算法,我就不太了解了 ^_^

    一个简单的使用演示:

    int main()
    {
    
        initModule_nonfree();//if use SIFT or SURF
        Ptr<FeatureDetector> detector = FeatureDetector::create( "SIFT" );
        Ptr<DescriptorExtractor> descriptor_extractor = DescriptorExtractor::create( "SIFT" );
        Ptr<DescriptorMatcher> descriptor_matcher = DescriptorMatcher::create( "BruteForce" );
        if( detector.empty() || descriptor_extractor.empty() )
            throw runtime_error("fail to create detector!");
    
        Mat img1 = imread("images\box_in_scene.png");
        Mat img2 = imread("images\box.png");
    
        //detect keypoints;
        vector<KeyPoint> keypoints1,keypoints2;
        detector->detect( img1, keypoints1 );
        detector->detect( img2, keypoints2 );
        cout <<"img1:"<< keypoints1.size() << " points  img2:" <<keypoints2.size() 
            << " points" << endl << ">" << endl;
    
        //compute descriptors for keypoints;
        cout << "< Computing descriptors for keypoints from images..." << endl;
        Mat descriptors1,descriptors2;
        descriptor_extractor->compute( img1, keypoints1, descriptors1 );
        descriptor_extractor->compute( img2, keypoints2, descriptors2 );
    
        cout<<endl<<"Descriptors Size: "<<descriptors2.size()<<" >"<<endl;
        cout<<endl<<"Descriptor's Column: "<<descriptors2.cols<<endl
            <<"Descriptor's Row: "<<descriptors2.rows<<endl;
        cout << ">" << endl;
    
        //Draw And Match img1,img2 keypoints
        Mat img_keypoints1,img_keypoints2;
        drawKeypoints(img1,keypoints1,img_keypoints1,Scalar::all(-1),0);
        drawKeypoints(img2,keypoints2,img_keypoints2,Scalar::all(-1),0);
        imshow("Box_in_scene keyPoints",img_keypoints1);
        imshow("Box keyPoints",img_keypoints2);
    
        descriptor_extractor->compute( img1, keypoints1, descriptors1 );  
        vector<DMatch> matches;
        descriptor_matcher->match( descriptors1, descriptors2, matches );
    
        Mat img_matches;
        drawMatches(img1,keypoints1,img2,keypoints2,matches,img_matches,Scalar::all(-1),CV_RGB(255,255,255),Mat(),4);
    
        imshow("Mathc",img_matches);
        waitKey(10000);
        return 0;
    }

    特征检测结果如图:

    Box_in_scene

    Box

    特征点匹配结果:

    Match

    另一点需要一提的是SimpleBlob的实现是有Bug的。不能直接通过 Ptr<FeatureDetector> detector = FeatureDetector::create("SimpleBlob");  语句来调用,而应该直接创建 SimpleBlobDetector的对象:

            Mat image = imread("images\features.jpg");
        Mat descriptors;
        vector<KeyPoint> keypoints;
        SimpleBlobDetector::Params params;
        //params.minThreshold = 10;
        //params.maxThreshold = 100;
        //params.thresholdStep = 10;
        //params.minArea = 10; 
        //params.minConvexity = 0.3;
        //params.minInertiaRatio = 0.01;
        //params.maxArea = 8000;
        //params.maxConvexity = 10;
        //params.filterByColor = false;
        //params.filterByCircularity = false;
        SimpleBlobDetector blobDetector( params );
        blobDetector.create("SimpleBlob");
        blobDetector.detect( image, keypoints );
        drawKeypoints(image, keypoints, image, Scalar(255,0,0));

    以下是SimpleBlobDetector按颜色检测的图像特征:

    [1] Rosten. Machine Learning for High-speed Corner Detection, 2006

    本文转自:http://blog.csdn.net/xiaowei_cqu/article/details/8652096

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  • 原文地址:https://www.cnblogs.com/tianyalu/p/5468010.html
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