• Harris算子进行角点检测算法


    function points = kp_harris(im)
        % Extract keypoints using Harris algorithm (with an improvement
        % version)
        
        % INPUT
        % =====
        % im     : the graylevel image
        %
        % OUTPUT
        % ======
        % points : the interest points extracted
        %
        % REFERENCES
        % ==========
        % C.G. Harris and M.J. Stephens. "A combined corner and edge detector",
        % Proceedings Fourth Alvey Vision Conference, Manchester.
        % pp 147-151, 1988.
        %
        % Alison Noble, "Descriptions of Image Surfaces", PhD thesis, Department
        % of Engineering Science, Oxford University 1989, p45.
        %
        % C. Schmid, R. Mohrand and C. Bauckhage, "d",
        % Int. Journal of Computer Vision, 37(2), 151-172, 2000.
        %
        % EXAMPLE
        % =======
        % points = kp_harris(im)
     
        % only luminance value
        %size(im)
        im = double(im(:,:,1));
        sigma = 1.5;
        
        % derivative masks
        s_D = 0.7*sigma;
        x  = -round(3*s_D):round(3*s_D);
        
        dx = x .* exp(-x.*x/(2*s_D*s_D)) ./ (s_D*s_D*s_D*sqrt(2*pi));
        dy = dx';
        
        % image derivatives
        Ix = conv2(im, dx, 'same');
        Iy = conv2(im, dy, 'same');
     
        % sum of the Auto-correlation matrix
        s_I = sigma;
        g = fspecial('gaussian',max(1,fix(6*s_I+1)), s_I);
        Ix2 = conv2(Ix.^2, g, 'same'); % Smoothed squared image derivatives
        Iy2 = conv2(Iy.^2, g, 'same');
        Ixy = conv2(Ix.*Iy, g, 'same');
     
        % interest point response
        cim = (Ix2.*Iy2 - Ixy.^2)./(Ix2 + Iy2 + eps);               
     
        % find local maxima on 3x3 neighborgood
        [r,c,max_local] = findLocalMaximum(cim,3*s_I);
     
        % set threshold 1% of the maximum value
        %t = 0.01*max(max_local(:));
     
        t = 0.6*max(max_local(:)); %door.jpg
        %t = 0.48*max(max_local(:));  %sunflower.jpg
        
        % find local maxima greater than threshold
        [r,c] = find(max_local>=t);
     
        % build interest points
        points = [r,c];
    end
    

      

    function [row,col,max_local] = findLocalMaximum(val,radius)
        % Determine the local maximum of a given value
        %
        %
        % INPUT
        % =====
        % val    : the NxM matrix containing values
        % radius : the radius of the neighborhood
        %
        % OUTPUT
        % ======
        % row       : the row position of the local maxima
        % col       : the column position of the local maxima
        % max_local : the NxM matrix containing values of val on unique local maximum
        %
        % EXAMPLE
        % =======
        % [l,c,m] = findLocalMaximum(img,radius);
        
        % FIND UNIQUE LOCAL MAXIMA USING FILTERING (FAST)
        mask  = fspecial('disk',radius)>0;
        nb    = sum(mask(:));
        highest          = ordfilt2(val, nb, mask);
        second_highest   = ordfilt2(val, nb-1, mask);
        index            = highest==val & highest~=second_highest;
        max_local        = zeros(size(val));
        max_local(index) = val(index);
        [row,col]        = find(index==1);
    end
    

    结果:

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  • 原文地址:https://www.cnblogs.com/CBDoctor/p/3019070.html
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