Title :
Context-based lossless image coding using EZW framework
Author :
Ramaswamy, V.N. ; Namuduri, K.R. ; Ranganathan, N.
Author_Institution :
AT&T Bell Labs., Holmdel, NJ, USA
fDate :
4/1/2001 12:00:00 AM
Abstract :
Previous research advances have shown that wavelet-based image-compression techniques offer several advantages over traditional techniques in terms of progressive transmission capability, compression efficiency, and bandwidth utilization. The embedded zerotree wavelet (EZW) coding technique suggested by Shapiro (1992), and its modification-set partitioning in hierarchical trees (SPIHT), suggested by Said and Pearlman (19996)-demonstrate the competitive performance of wavelet-based compression schemes. The EZW-based lossless image coding framework consists of three stages: (1) reversible discrete wavelet transform; (2) hierarchical ordering and selection of wavelet coefficients; and (3) context-modeling-based entropy (arithmetic) coding. The performance of the compression algorithm depends on the choice of various parameters and the implementation strategies employed in all the three stages. This paper proposes different context modeling and selection techniques for efficient entropy encoding of wavelet coefficients, along with the modifications performed to the SPIHT algorithm. The results of several experiments presented in this paper demonstrate the importance of context modeling in the EZW framework. Furthermore, this paper shows that appropriate context modeling improves the performance of compression algorithm after a multilevel subband decomposition is performed
Keywords :
arithmetic codes; data compression; discrete wavelet transforms; entropy codes; image coding; transform coding; trees (mathematics); EZW coding; SPIHT algorithm; arithmetic coding; bandwidth utilization; compression algorithm performance; compression efficiency; context-based lossless image coding; context-modeling-based entropy coding; embedded zerotree wavelet coding; entropy encoding; hierarchical wavelet coefficients ordering; hierarchical wavelet coefficients selection; multilevel subband decomposition; progressive transmission; reversible discrete wavelet transform; set partitioning in hierarchical trees; wavelet-based image-compression; Arithmetic; Compression algorithms; Context modeling; Decorrelation; Discrete wavelet transforms; Entropy coding; Filters; Image coding; Wavelet coefficients; Wavelet transforms;
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on