Image processing for crater detection
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Can anyone help me with the code for the crater detection of the image
5 comentarios
Doug Hull
el 27 de Oct. de 2011
What techniques have you tried? We can help with implementation into MATLAB, but you should have an idea of the algorithm you wish to implement.
Vishnu
el 28 de Oct. de 2011
Amith Kamath
el 29 de Oct. de 2011
This seems like an interesting problem. I suppose, for the thresholding, the way they calculate the limits Rm, Rmin and Rmax needs to be known. If this is known, the resulting image can be written as easily as:
I = imread('lunar1.png');
For the rgb to hsv conversion (though I don't really see the point doing this), http://www.mathworks.com/help/techdoc/ref/rgb2hsv.html can be used on I.
I = rgb2hsv(I);
I would rather do
I = rgb2gray(I); %So that thresholding in 1 image layer is easier, unless multiband thresholding is what you want.
For the thresholding, something like:
J = (I > Rmin & I < Rmax); %To extract the parts of the image that's needed.
Alternatively, threshold at somewhere suitable so that:
K = (J > Rmed); %where Rmed is between Rmin and Rmax.
now with K, all the morphological operations can be done, since K is already a logical matrix.
You could use imdilate, imerode, with suitable SE, created using strel.
The distance and angle representation seems a bit more complicated, and I would not want to delve into that unless I know more about how it really works.
Hope this helps!
Vishnu
el 29 de Oct. de 2011
Vishnu
el 31 de Oct. de 2011
Respuestas (1)
Ashish Uthama
el 17 de Sept. de 2012
0 votos
"This seems like an interesting problem. I suppose, for the thresholding, the way they calculate the limits Rm, Rmin and Rmax needs to be known. If this is known, the resulting image can be written as easily as:
I = imread('lunar1.png');
For the rgb to hsv conversion (though I don't really see the point doing this), http://www.mathworks.com/help/techdoc/ref/rgb2hsv.html can be used on I.
I = rgb2hsv(I);
I would rather do
I = rgb2gray(I); %So that thresholding in 1 image layer is easier, unless multiband thresholding is what you want.
For the thresholding, something like:
J = (I > Rmin & I < Rmax); %To extract the parts of the image that's needed.
Alternatively, threshold at somewhere suitable so that:
K = (J > Rmed); %where Rmed is between Rmin and Rmax.
now with K, all the morphological operations can be done, since K is already a logical matrix.
You could use imdilate, imerode, with suitable SE, created using strel.
The distance and angle representation seems a bit more complicated, and I would not want to delve into that unless I know more about how it really works.
Hope this helps! "
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