Above is a representation of calculating corners in an image using Harris Corner Detection Algorithm . I have implemented up to step 5 , however , in step 6 , I can not decide how to set up the threshold for the values obtained in calculating `R = det(H) - k(trace(H))^2`

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This screenshot has been taken from Robert Collins slides http://www.cse.psu.edu/~rcollins/CSE486/lecture06.pdf , where he mentions of taking corners
and setting up threshold values of `-1000 for edges and 10000 for corners`

. Values in between doesn't have any significance .

My question is he was subjective about his experiment and his choice of sample image , and for a particular image , values of `-10000 and 10000`

worked . In real life , there would be no way of knowing what sort of image to expect , how would then the threshold value be chosen .

P.S: I have tried with Matlab's `rice.png`

, the threshold values are way off .

Edit: I have looked at this question about Harris Corner Implementing a Harris corner detector which says " Just collect all pixels that have a higher value than all other pixels in the 5x5 neighborhood around them". I want something more mathematical for to implement .

Thanks.