How to find "rectangular" corners?

Hey,
I have this image:
I want to find the 4 corners of the "rectangular", but I don't want to use the "corner" function. What can I do?
Thanks.

1 comentario

Cedric
Cedric el 24 de Mayo de 2014
If your rectangles are not too degenerate, you could get corners with four 2D convolutions using appropriate kernels.

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Matt J
Matt J el 24 de Mayo de 2014
Editada: Matt J el 24 de Mayo de 2014
If the quadrilateral is roughly aligned with the edges of the image, you could also find the corners as follows,
[I,J]=find(Image>max(Image(:))/2);
IJ=[I,J];
[~,idx]=min(IJ*[1 1; -1 -1; 1 -1; -1 1].');
corners=IJ(idx,:)

13 comentarios

Mor
Mor el 31 de Mayo de 2014
Hi,
It works. Can you explain what this line: [~,idx]=min(IJ*[1 1; -1 -1; 1 -1; -1 1].');?
Matt J
Matt J el 31 de Mayo de 2014
It finds where the sums and differences of the coordinates in the shape are maximized and minimized.
Bálint Udvardy
Bálint Udvardy el 23 de Feb. de 2018
Hi, I have just found this thread. I have a similar problem now: I am working on a nonogram-solver and I want to remove the perspective from the image to get the picture of the puzzle, but after extracting the largest connected component from the image (the puzzle grid) and using convex hull of that component I get a pentagram. Unfortunately, all the corner detectors fail to detect the 5 corners. Using your method detects 4 corners, which itself is an improvement, but I need that 5th corner to calculate the theoretical "true" upper left corner, which i need to remove the perspective.
Matt J
Matt J el 23 de Feb. de 2018
Why do you need the "upper left" corner? Why can't you use the 4 point correspondences that you already have to compute the perspective transform?
Bálint Udvardy
Bálint Udvardy el 26 de Feb. de 2018
How? I only know that the right and the left vertical lines should be paralell to each other and have the same length in real, but on the photo it can be shorter or longer.
Matt J
Matt J el 26 de Feb. de 2018
You know all the little boxes in the puzzle grid are the same size and therefore you know the world coordinates of all corners of those boxes with respect to that grid. That gives you lots of point-to-point correspondence information.
Syed Haider
Syed Haider el 18 de Abr. de 2018
Dear Matt,
Thanks for the code. It did work really well on most of the images. But if I apply the same code to the image attached,
I get the wrong corners. I have attached the output image below. Any suggestions would be highly appreciated.
Thanks,
Irtaza
Matt J
Matt J el 18 de Abr. de 2018
A quick fix would be to imrotate() the image, so the rectangle is better aligned with the edges of the image grid. Then find the corners of the rotated rectangle and then rotate back.
Image Analyst
Image Analyst el 18 de Abr. de 2018
Compute the centroid, then the distances to the boundary points. Then use findpeaks() to find the vertices. I have a demo if you want - start your own brand new thread.
What is the idea behind the code ? Is it a standard kernel ?
[~,idx]=min(IJ*[1 1; -1 -1; 1 -1; -1 1].')
Balkrishna Patankar
Balkrishna Patankar el 25 de Jun. de 2019
Thank you (y)
Matt J
Matt J el 22 de Oct. de 2019
Editada: Matt J el 22 de Oct. de 2019
Here is a generalization of the approach to arbitrary convex quadrilaterals. No particular orientation is assumed.
N=360;
theta=linspace(0,360,N);
[I,J]=find(Image);
IJ=[I,J];
c=nan(size(theta));
for i=1:N
[~,c(i)]=max(IJ*[cosd(theta(i));sind(theta(i))]);
end
H=histcounts(c,1:numel(I)+1);
[~,k] = maxk(H,4);
corners=IJ(k,:)

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Más respuestas (4)

Matt J
Matt J el 6 de Feb. de 2020
Use pgonCorners from the File Exchange (Download). It applies to any convex polyhedron.
numVertices=4;
corners=pgonCorners(Image,numVertices)
Image Analyst
Image Analyst el 23 de Mayo de 2014
Editada: Image Analyst el 23 de Mayo de 2014

1 voto

Why not try the corner() function in the Image Processing Toolbox. What do you have against using that?
Or else call bwboundaries() and go along the coordinates looking for kinks in the curve as shown by the FAQ: http://matlab.wikia.com/wiki/FAQ#How_do_I_find_.22kinks.22_in_a_curve.3F

1 comentario

Mor
Mor el 24 de Mayo de 2014
Hi,
Thanks for your answer. The reason I don't want to use the corner() function is because I have more pictures and in some of them the corner function doesn't work good (detects 2 corners is the same place) I think it's because the lines are not straight. maybe there is some configuration to make it work for every picture.

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Matt J
Matt J el 24 de Mayo de 2014

1 voto

Maybe use edge() followed by houghlines() with an appropriate FillGap selection? The endpoints of the line segments returned by houghlines would be the corners of the quadrilateral.

3 comentarios

Mor
Mor el 24 de Mayo de 2014
Hi Matt,
Here is the result:
The top left and the bottom right are not exactly the corner, It's because it's not a straight lines.
If you need the exact corner, use (untested)
boundaries = bwboundaries(binaryImage);
x = boundaries{:,1};
y = boundaries{:,2};
and compare every x and y to see which is closest to the hough points
distances = sqrt((xh - x).^ 2 + (yh - y) .^ 2)
[minDistance, indexOfMin] = min(distances);
xc = x(indexOfMin);
yc = y(indexOfMin);
Do the above for each hough estimated point to find the point in the blob which is closest to the hough point (xh, yh).
Matt J
Matt J el 24 de Mayo de 2014
Editada: Matt J el 24 de Mayo de 2014
You can be generous with the RhoResolution, given the large size of the quadrilateral. I get a pretty good fit to the edges with the following,
[H,T,R] = hough(E,'RhoResolution',4,'Theta',-90:.5:89);
Similar to what ImageAnalyst was saying, this initial line fit should allow you to segment the boundary points into 4 separate edges. You do this by finding the closest point to each initial line. You can then do a more refined line fit to each edge using each group of points (e.g., using polyfit).

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Image Analyst
Image Analyst el 24 de Mayo de 2014

0 votos

If the quad is roughly aligned with the edges of the image you could also get the distance from the 4 corners. For each corner, take the one point on the white boundary that has the minimum distance. No need to mess with hough in that case.

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Preguntada:

Mor
el 23 de Mayo de 2014

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el 6 de Feb. de 2020

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