Title :
Video filtering with Fermat number theoretic transforms using residue number system
Author :
Toivonen, Tuukka ; Heikkilä, Janne
Author_Institution :
Machine Vision Group, Univ. of Oulu, Finland
Abstract :
We investigate image and video convolutions based on Fermat number transform (FNT) modulo q=2M+1 where M is an integer power of two. These transforms are found to be ideal for image convolutions, except that the choices for the word length, restricted by the transform modulus, are rather limited. We discuss two methods to overcome this limitation. First, we allow M to be an arbitrary integer. This gives much wider variety in possible moduli, at the cost of decreased transform length of 16 or 32 points for M<32. Nevertheless, the transform length appears still to be useful especially with block-based image and video filtering applications. We call these transforms the generalized FNT (GFNT). The second solution is to use a residue number system (RNS) to enlarge the effective modulus, while performing actual number theoretic transforms with smaller moduli. This approach appears to be particularly useful with moduli q1=216+1 and q2=28+1, which allow transforms up to 256 points with a dynamic range of about 24 bits. We design an efficient reconstruction circuit based on mixed radix conversion for converting the result from diminished-1 RNS into normal binary code. The circuit is implemented in VHDL and found to be very small in area. We also discuss the necessary steps in performing convolutions with the GFNT and evaluate the integrated circuit implementation cost for various elementary operations.
Keywords :
binary codes; convolution; filtering theory; hardware description languages; image reconstruction; residue number systems; transforms; video signal processing; Fermat number theoretic transforms; binary code; image convolutions; residue number system; video convolutions; video filtering; Circuits; Convolutional codes; Costs; Digital filters; Dynamic range; Fast Fourier transforms; Filtering; Finite impulse response filter; Fourier transforms; Kernel; Convolution; FIR digital filters; correlation; discrete transforms; image processing; multidimensional digital filters;
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
DOI :
10.1109/TCSVT.2005.858612