# Generalized Hough R-Table

I am trying to implement the generalized Hough transform as presented in this paper in MATLAB. I've also tried using this document to understand the algorithm. I am stuck on figuring out how to calculate the gradient angle to find Φ to use in the R-Table.

I have tried to run this matlab implementation, but the contour function tries to access negative indices. The missing functions are below.

distance.m

``````function [ d ] = distance( x1, y1, x2, y2 )
d = sqrt( (x2-x1)^2 + (y2-y1)^2 );
end
``````

barycenter.m

``````function [ xo, yo ] = barycenter( img )
%   gravitational center coordinates of a shape

[rows, cols] = size(img);
x = ones(rows, 1)*(1:cols);
y = (1:rows)'*ones(1,cols);
area = sum(sum(img));
xo = sum(sum(double(img) .* x)) / area;
yo = sum(sum(double(img) .* y)) / area;

end
``````

modelHough.m

``````function [H]=ModelHough(imgRGB)
% Generalized Hough Transform Modeling

% Image Binarization
imgBW = rgb2gray(imgRGB);
imgBI = imgBW < 255;

% Retrieving information about the contour: points and number (N)
N = contour(imgBI);

% Model initialization:
% row = beta value * 100
% column = number of the couple (alpha, distance)
% 3rd dimension: 1 = alpha, 2 = distance
H=zeros(round(100*2*pi),N,2);

% Compute of the barycenter coordinates
[ xo, yo ] = barycenter(imgBI);

% for each contour point
for i=1:N

% beta compute for ith contour point
b = beta(N, imgBI, i);

% research of the first column
k=1;
while H(b+1,k,2)~=0
k=k+1;
end

% compute of the alpha value
H(b+1, k, 1) = alpha(N, i, imgBI);

% compute of the distance value
H(b+1, k, 2) = distance( xo, yo, i, b );

end
``````

If you use a common edge detector for detecting edges you should change `countor.m` on row 14 to something like below:
``````while (img(i,j)~=1)