How can I perform region growing with two seed points?
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Cretu Ioana
el 15 de Mzo. de 2020
Respondida: Image Analyst
el 15 de Mzo. de 2020
Hi everyone!
I have some images of the carotid artery, and I need to segment the image to obtain the outer wall and the plaque region. I used a function posted here (region growing from one seed point), and I tried to modify it. I want the function to have two seeded points, but my function doesn't work. Can you please give me some suggestion?
This is for my school project.
function J=RG2incerc(I,x,y,x2,y2,reg_maxdist1,reg_maxdist2)
% This function performs "region growing" in an image from a specified
% seedpoint (x,y)
%
% J = regiongrowing(I,x,y,t)
%
% I : input image
% J : logical output image of region
% x,y : the position of the seedpoint (if not given uses function getpts)
% t : maximum intensity distance (defaults to 0.2)
%
% The region is iteratively grown by comparing all unallocated neighbouring pixels to the region.
% The difference between a pixel's intensity value and the region's mean,
% is used as a measure of similarity. The pixel with the smallest difference
% measured this way is allocated to the respective region.
% This process stops when the intensity difference between region mean and
% new pixel become larger than a certain treshold (t)
%
% Example:
% I = im2double(imread('medtest.png'));
% x=198; y=359;
% J = regiongrowing(I,x,y,0.2);
% figure, imshow(I+J);
%
% Author: D. Kroon, University of Twente
if(exist('reg_maxdist1','var')==0), reg_maxdist1=0.2; end
if(exist('y','var')==0), figure, imshow(I,[]); [y1,x1]=getpts; y=round(y(1)); x=round(x(1)); end
J = zeros(size(I)); % Output
J2=zeros(size(I));
Isizes = size(I); % Dimensions of input image
reg_mean = I(x,y); % The mean of the segmented region
reg_mean2=I(x2,y2);
reg_size = 1; % Number of pixels in region
reg_size2=1;
% Free memory to store neighbours of the (segmented) region
neg_free = 10000; neg_pos=0; neg_free2=10000; neg_pos2=0;
neg_list = zeros(neg_free,3); neg_list2 = zeros(neg_free2,3);
pixdist=0; % Distance of the region newest pixel to the regio mean
pixdist2=0;
% Neighbor locations (footprint)
neigb=[-1 0; 1 0; 0 -1;0 1];
neigb2=[-1 0; 1 0; 0 -1;0 1];
% Start regiogrowing until distance between regio and posible new pixels become
% higher than a certain treshold
while(pixdist<reg_maxdist1&®_size<numel(I))
% Add new neighbors pixels
for j=1:4,
% Calculate the neighbour coordinate
xn = x +neigb(j,1); yn = y +neigb(j,2);
% Check if neighbour is inside or outside the image
ins=(xn>=1)&&(yn>=1)&&(xn<=Isizes(1))&&(yn<=Isizes(2));
% Add neighbor if inside and not already part of the segmented area
if(ins&&(J(xn,yn)==0))
neg_pos = neg_pos+1;
neg_list(neg_pos,:) = [xn yn I(xn,yn)]; J(xn,yn)=1;
end
end
% Add a new block of free memory
if(neg_pos+10>neg_free), neg_free=neg_free+10000; neg_list((neg_pos+1):neg_free,:)=0; end
% Add pixel with intensity nearest to the mean of the region, to the region
dist = abs(neg_list(1:neg_pos,3)-reg_mean);
[pixdist, index] = min(dist);
J(x,y)=2; reg_size=reg_size+1;
% Calculate the new mean of the region
reg_mean= (reg_mean*reg_size + neg_list(index,3))/(reg_size+1);
% Save the x and y coordinates of the pixel (for the neighbour add proccess)
x = neg_list(index,1); y = neg_list(index,2);
% Remove the pixel from the neighbour (check) list
neg_list(index,:)=neg_list(neg_pos,:); neg_pos=neg_pos-1;
end
J=J>1;
while(pixdist2<reg_maxdist2&®_size2<numel(I))
% Add new neighbors pixels
for j=1:4,
% Calculate the neighbour coordinate
xn = x2 +neigb(j,1); yn = y2 +neigb(j,2);
% Check if neighbour is inside or outside the image
ins=(xn>=1)&&(yn>=1)&&(xn<=Isizes(1))&&(yn<=Isizes(2));
% Add neighbor if inside and not already part of the segmented area
if(ins&&(J(xn,yn)==0))
neg_pos2 = neg_pos2+1;
neg_list2(neg_pos2,:) = [xn yn I(xn,yn)]; J2(xn,yn)=1;
end
end
% Add a new block of free memory
if(neg_pos2+10>neg_free2), neg_free2=neg_free2+10000; neg_list2((neg_pos2+1):neg_free2,:)=0; end
dist2 = abs(neg_list2(1:neg_pos2,3)-reg_mean2);
[pixdist2, index] = min(dist2);
J2(x,y)=2; reg_size2=reg_size+1;
% Calculate the new mean of the region
reg_mean2= (reg_mean2*reg_size2 + neg_list2(index,3))/(reg_size2+1);
x2 = neg_list2(index,1); y2 = neg_list2(index,2);
% Remove the pixel from the neighbour (check) list
neg_list2(index,:)=neg_list2(neg_pos2,:); neg_pos2=neg_pos2-1;
end
J2=J2>1;
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Respuesta aceptada
Stijn Haenen
el 15 de Mzo. de 2020
Can you upload an image, and give examples of the values: I,x,y,x2,y2,reg_maxdist1,reg_maxdist2, then we can run the code and check whats wrong.
Más respuestas (1)
Image Analyst
el 15 de Mzo. de 2020
I see you've accepted Stijn's answer so your problem is already solved now,
but for what it's worth, I'm attaching my magic wand program. It's similar to the magic wand region growing tool in Photoshop. Maybe it will help other people.
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