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L/sub /spl infin//-constrained high-fidelity image...
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L/sub /spl infin//-constrained high-fidelity image compression via adaptive context modeling

Abstract

We study high-fidelity image compression with a given tight bound on the maximum error magnitude. We propose some practical adaptive context modeling techniques to correct prediction biases caused by quantizing prediction residues, a problem common to the current DPCM like predictive nearly-lossless image coders. By incorporating the proposed techniques into the nearly-lossless version of CALIC, we were able to increase its PSNR by 1 dB or more and/or reduce its bit rate by ten per cent or more. More encouragingly, at bit rates around 1.25 bpp our method obtained competitive PSNR results against the best wavelet coders, while obtaining much smaller maximum error magnitude.

Authors

Wu X; Choi WK; Bao P

Pagination

pp. 91-100

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

January 1, 1997

DOI

10.1109/dcc.1997.581978

Name of conference

Proceedings DCC '97. Data Compression Conference

Conference proceedings

Proceedings DCC '98 Data Compression Conference (Cat No98TB100225)

ISSN

2375-0383
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