Title :
Error-resilient pyramid vector quantization for image compression
Author :
Hung, Andy C. ; Tsern, Ely K. ; Meng, Teresa H.
Author_Institution :
InterVideo Inc., Fremont, CA, USA
fDate :
10/1/1998 12:00:00 AM
Abstract :
Pyramid vector quantization (PVQ) uses the lattice points of a pyramidal shape in multidimensional space as the quantizer codebook. It is a fixed-rate quantization technique that can be used for the compression of Laplacian-like sources arising from transform and subband image coding, where its performance approaches the optimal entropy-coded scalar quantizer without the necessity of variable length codes. In this paper, we investigate the use of PVQ for compressed image transmission over noisy channels, where the fixed-rate quantization reduces the susceptibility to bit-error corruption. We propose a new method of deriving the indices of the lattice points of the multidimensional pyramid and describe how these techniques can also improve the channel noise immunity of general symmetric lattice quantizers. Our new indexing scheme improves channel robustness by up to 3 dB over previous indexing methods, and can be performed with similar computational cost. The final fixed-rate coding algorithm surpasses the performance of typical Joint Photographic Experts Group (JPEG) implementations and exhibits much greater error resilience
Keywords :
image coding; source coding; transform coding; vector quantisation; visual communication; Laplacian-like sources; bit-error corruption; channel noise immunity; channel robustness; compressed image transmission; computational cost; error-resilient pyramid vector quantization; fixed-rate coding algorithm; fixed-rate quantization technique; general symmetric lattice quantizers; image compression; indexing scheme; indices; lattice points; multidimensional space; noisy channels; performance; pyramidal shape; quantizer codebook; subband image coding; transform image coding; Computational efficiency; Image coding; Image communication; Indexing; Lattices; Multidimensional systems; Noise reduction; Noise robustness; Shape; Vector quantization;
Journal_Title :
Image Processing, IEEE Transactions on