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I am not very expirienced in image processing...but have acquired some very noisy SEM images and it's hard to distinguish the particles I want to segment from the background. I know it's a general question but still...can you direct me to how I should go about it?

enter image description here thank you in advance Adi

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It would be helpful to see an example of an image. However, SEM noise is often shot noise, so maybe a median filter would be a useful tool. – Roger Rowland Nov 3 '13 at 16:08
Thanks. Unfortunately I can't load an image because I need a minimal reputation of 10... – Adi Jakten Nov 3 '13 at 16:34
If you can upload it anywhere (e.g. dropbox or whatever) and edit the link into your question, myself or someone else can put the pic in for you) – Roger Rowland Nov 3 '13 at 17:48
thanks you. I uploaded it using dropbox – Adi Jakten Nov 4 '13 at 7:42
If what you want are all the big white dots you can use a Median Filter like @Roger Rowland suggested. After that you could use a threshold to set all background pixel to zero. – Mailerdaimon Nov 4 '13 at 7:47

It's difficult to be too specific without knowing what you want to achieve. If it's just improvement of the image in visual terms, a median filter would be my first suggestion. Use a small kernel size to avoid eroding edges too much.

As an example, here is a section of your original unprocessed image:


And here is the same section after applying a median filter with a 2 pixel radius:


It looks to me like the image is also slightly defocused, to which you can attempt some deconvolution algorithms like the Wiener filter, for example.

If you want to process the image in some way, for example to count the blobs (although that image is a really poor starting point), you can threshold it to get a binary image and then use morphological operations to refine the content. For example, I took the median filtered image, thresholded to binary and then performed a morphological open operation (an erode followed by a dilate):


To refine the segmentation and to split some of the touching particles, you can try a watershed segmentation on the binary image, like this:


Note that all of these images I produced using ImageJ, if you want to experiment further.

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Thanks Roger! Yes I want to improve the image quality to be able to segment the white blobs. I tried a median filter and weiner deconvolution but the results were not good and as you said, this is a really poor starting point. The weiner filter requires some knowledge of the noise which I don't have. – Adi Jakten Nov 4 '13 at 8:18
@AdiJakten yes I understand only too well! If you want to explore some more advanced noise removal, take a look at total variation denoising too - there are some C and MATLAB sources out there. – Roger Rowland Nov 4 '13 at 8:20
thanks!! I'll start reading more about noise removal – Adi Jakten Nov 4 '13 at 8:24
I can't vote up with reputation of less 15 :\ so will do so later on when it hopefully rises – Adi Jakten Nov 4 '13 at 9:15

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