Object Detection based on scale

3 ビュー (過去 30 日間)
Bogdan Dzyubak
Bogdan Dzyubak 2017 年 4 月 5 日
Dear Matlab Community,
Would anyone have a suggestion on how to do the task below. It seems like enough is known to do it successfully and that tasks like this should come up a lot, but I haven't found/developed an approach that I am entirely happy with.
The task is to detect and then threshold out objects of a certain (medium) size. Very high accuracy is not necessary. 1) "Objects" are blobs of a roughly known size with smooth edges (partial volume). An example for a 256x256 image is a size 50, standard dev 20 gaussian. An object can also be a fat halfmoon, say half as wide and twice as long as the gaussian, also with smooth edges. 2) "Background" covers a much bigger portion of the image than the objects. It contains smooth (low frequency) variations as well as high frequency noise. The background may not have a clear mean value and can change as a gradient across the image. 3) The mean value of the image and the dynamic range can vary within a factor of 10. So, objects are defined as having a relative difference with respect to the background (positive or negative).
This seems like a bandpass filter problem to me, with objects having intermediate sizes/frequencies and background being comprised of high/low frequencies. The problem with convolution-based methods I've tried tends to be that they do not exclude objects of a given size with enough specificity. Either they detect and exclude edges or values within a large homogeneous area of background, different from some other areas of the background, are detected (when I need to exclude only medium-sized objects).
Thank you in advance, Bogdan

回答 (0 件)

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by