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On Design of Linear Minimum-Entropy Predictor
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On Design of Linear Minimum-Entropy Predictor

Abstract

Linear predictors for lossless data compression should ideally minimize the entropy of prediction errors. But in current practice predictors of least-square type are used instead, In this paper we formulate and solve the linear minimum-entropy predictor design problem as one of convex or quasiconvex programming. The proposed minimum-entropy design algorithms are derived from the well-known fact that prediction errors of most signals obey generalized Gaussian distribution. Empirical results and analysis are presented to demonstrate the superior performance of the linear minimum-entropy predictor over the traditional least-square counterpart for lossless coding.

Authors

Wang X; Wu X

Pagination

pp. 199-202

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

October 1, 2007

DOI

10.1109/mmsp.2007.4412852

Name of conference

2007 IEEE 9th Workshop on Multimedia Signal Processing
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