How to do pixel based classification using SVM classifier
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Good day, I am graduate student and currently working on retinal blood vessel segmentation. I am new to this. I am supposed to classify which pixel is vessel pixel and which is not. I want to use SVM as a classifier for pixel based classification task. As I am a beginner, I don't know how may I train my classifier for this task and how may I get the segmented blood vessel network as an output. I am using drive database for this purpose its publicly available. I would like to seek some professional advice from the community to point me in the right direction on what I should be looking at or doing. I will be very grateful for your valuable suggestions. Regards, Arslan
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Image Analyst
on 25 Nov 2013
The two classes you want are "blood vessel" and "fundus". Okay, fine. Now, what are the two features that you hope to identify clusters (classes) in? https://en.wikipedia.org/wiki/Support_vector_machine Gray level? Alright, seems reasonable. What else? Variation in the window? Possibly. Did you try stdfilt() or entropyfilt()? Or do you have some other feature? Did you check section 20.5 here http://iris.usc.edu/Vision-Notes/bibliography/contentsmedical.html#Medical%20Applications,%20CAT,%20MRI,%20Ultrasound,%20Heart%20Models,%20Brain%20Models for algorithms that segment out vessels from ophthalmological images?
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Image Analyst
on 25 Nov 2013
Personally I haven't used SVM, but I would guess, based on Wikipedia, that you just take a representative sample that spans all cases you're ever likely to see and run it through to get a model. Then you use that model on all subsequent data. You might look through the stats tutorials here http://www.sportsci.org/resource/stats/
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