Title of article :
Gradient match and side match fractal vector quantizers for images
Author/Authors :
Chang، نويسنده , , H.T.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
In this paper, we propose gradient match fractal
vector quantizers (GMFVQs) and side match fractal vector
quantizers (SMFVQs), which are two classes of finite state fractal
vector quantizers (FSFVQs), for the image coding framework.
In our previous work, we proposed the noniterative fractal block
coding (FBC) technique to improve the decoding speed and the
coding performance for conventional FBC techniques. To reduce
the number of bits for denoting the fractal code of the range
block, the concepts of the gradient match vector quantizers
(GMVQs) and the side match vector quantizers (SMVQs) are
employed to the noniterative FBC technique. Unlike ordinary
vector quantizers, the super codebooks in the proposed GMFVQs
and SMFVQs are generated from the affine-transformed domain
blocks in the noniterative FBC technique. The codewords in
the state codebook are dynamically extracted from the super
codebook with the side-match and gradient-match criteria. The
redundancy in the affine-transformed domain blocks is greatly
reduced and the compression ratio can be significantly increased.
Our simulation results show that 15%–20% of the bit rates in
the noniterative FBC technique are saved by using the proposed
GMFVQs.
Keywords :
gradient match , Finite state vector quantization , fractal blockcoding , fractal vector quantizer , side match.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING