# Fourier Transform and Fourier Descriptors to extract shapes features on Java

I am trying to build a simple system to recognize simple shapes using Fourier descriptors: I am using this implementation of Fast fourier transform on my program: (link below) http://www.wikijava.org/wiki/The_Fast_Fourier_Transform_in_Java_%28part_1%29

fft(double[] inputReal, double[] inputImag, boolean direction)

inputs are: real and imag part (which are essentially x,y coordinates of boundary parameter I have) and outputs are the transformed real and imag numbers.

question: How can i use the output (transformed real,imag ) as a invariant descriptors of my simple shapes?

This was what i Thought: calculate R = sqrt( real^2 + imag^2 ) for each N steps. and divide each R by R[1] = the normalization factor to make it invariant.

The problem is I get very different R values for slightly different images ( such as slight rotations applied, etc)

IN other words: my descriptors are not invariant... I think I am doing something wrong getting the R value. please help me..

-
A brilliant site for fourier series,do take a look at it Fourier Series –  Vivekanand Aug 13 '12 at 12:11

There is some theory you need to know first about Fourier Descriptors: it's an extremely interesting technique, but should be devised correctly. What you want is invariance; invariance for rotation, translation, maybe even affine transforms. To allow good comparison with other sets of Fourier descriptors you should take following things in consideration:

• if you want invariance to translation, do not use the DC-term, that is the first element in your resulting array of Fourier coefficients
• if you want invariance to scaling, make the comparison ratio-like, for example by dividing every Fourier coefficient by the DC-coefficient. f*[1] = f[1]/f[0], f*[2]/f[0], and so on.
• if you want invariance to the start point of your contour, only use absolute values of the resulting Fourier coefficients.
• Only the first 5 to 8 Fourier coefficients are useful when comparing the coefficients of two different objects; higher coefficients only go into the details of your contour which mostly isn't very useful information. (it's the global form that matters)
• Let's say you have 2 objects, and their Fourier descriptors. The resulting array of Fourier coefficients can be of a different size, meaning that the 'frequency interval' of the resulting frequency content is different for both shapes. You can't compare apples with pears. Zero-pad your shortest contour to match the size of the longest contour, and then calculate the Fourier descriptors. Now you have analogy between coefficients and a good comparison.

Hope this helps. Btw, user-made FFT solutions are not to be trusted in my opinion. Go for the solutions libraries reach out. If working with images, OpenCV provides Fourier transform utilities.

-

If you are looking to match different shapes, try using different shape descriptors from MPEG-7 standard. You will probably need a classifier, take a look at SVM, Boosting, Neural Networks ...: http://docs.opencv.org/modules/ml/doc/ml.html

-