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Minimax Multiresolution Scalar Quantization
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Minimax Multiresolution Scalar Quantization

Abstract

We consider the problem of design and analysis of optimal $L_{\infty}$ (minmax) multi-resolution scalar quantizers (MRSQ). The overall multi-resolution $L_{\infty}$ distortion of an MRSQ is defined to be a weighted sum of $L_{\infty}$ distortions over all refinement levels of the MRSQ. The weight for a refinement level usually denotes the probability that the MRSQ will operate at that level (rate). An interesting relation of the problem to the design of optimal binary prefix codes under a code cell contiguity constraint is established. Lower bounds for the overall multi-resolution $L_{\infty}$ distortion are derived based on this relation. Provably optimal as well as fast, near optimal algorithms are also developed for practically interesting scenarios. Furthermore, the performance penalty incurred by making a scalable quantizer embedded (progressively refinable) is analyzed. It is shown that constraining the quantizers to be embedded would on average increase the $L_{\infty}$ quantization error by at least 44fo.

Authors

Sarshar N; Wu X

Pagination

pp. 52-61

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

January 1, 2004

DOI

10.1109/dcc.2004.1281450

Name of conference

Data Compression Conference, 2004. Proceedings. DCC 2004
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