Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Which is the difference between WeightedNormalizedMoments, WeightedHuMoments and HuMoments? (http://scikit-image.org/docs/0.6/api/skimage.measure.html)

There are other shape properties scale-rotation invariant except HuMoment? There are example that show me how can i implement them? I find this example in c++ OpenCV(C): calculating moments FROM contour but i prefer working in python

share|improve this question
    
There is a very trivial descriptor that is invariant to everything: number of connected components; question solved ? But that is hardly a good descriptor per se, so maybe you want something better than that ? Fourier descriptors can be easily made invariant to scale and rotation, question solved now ? One of the problems with your question is that it actually contains multiple questions, pick one of them to be your question. –  mmgp Jan 18 '13 at 19:21
add comment

2 Answers

Moments are always calculated/summed over a local image feature, which needs to be segmented and labelled in the first place. The following formula is valid for the weighted and non-weighted case:

m_ji = sum{ array(x, y) * x^j * y^i }

The actual difference between weighted and non-weighted moments in scikit-image (and in general) is the following:

non-weighted:  array(x, y) is a binary image
weighted:      array(x, y) is a grey-level image (each point/pixel is weighted by its grey-level)

These moments are only translation-invariant. To make them scale-invariant we need to normalize them with the following formula:

nu_ji = mu_ji / m_00^[(i+j)/2 + 1]

Invariance is meant in terms of geometric transformation.

For more information about moments and its applications you can also have a look at the linked references in the skimage.measure.regionprops function.

share|improve this answer
add comment

Everything that you need is written here, including the definition of how to calculate your own moments. It's a trivial and sub-100 lines of code implementation. http://en.wikipedia.org/wiki/Image_moment

Of course, you only want to sum over pixels actually inside the contour, so PointPolygonTest will be of use to you.

share|improve this answer
    
i'm not well explained, here i find scikit-image.org/docs/dev/api/skimage.measure.html these 3 differents moments: WeightedNormalizedMoments, WeightedHuMoments and HuMoments. On wikipedia there are only mathematical formula. how i use it: skimage.measure.regionprops(label_image, properties=['huMoments']) ? labelimage is image's name? –  postgres Jan 19 '13 at 0:20
    
and WeightedHuMoments, why ought to be weighted? –  postgres Jan 19 '13 at 0:22
    
i find it for cv2 module here. opencvpython.blogspot.in/2012/06/contours-3-extraction.html there is a function moments for finding centroid. –  postgres Jan 19 '13 at 0:31
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.