Statistical Mechanical Approach to Lossy Data Compression:Theory and Practice
摘要
The encoder and decoder for lossy data compression of binary memoryless sources are developed on the basis of a specific-type nonmonotonic perceptron. Statistical mechanical analysis indicates that the potential ability of the perceptron-based code saturates the theoretically achievable limit in most cases although exactly performing the compression is computationally difficult. To resolve this difficulty, we provide a computationally tractable approximation algorithm using belief propagation (BP), which is a current standard algorithm of probabilistic inference. Introducing several approximations and heuristics, the BP-based algorithm exhibits performance that is close to the achievable limit in a practical time scale in optimal cases.
引用
@article{arxiv.cs/0509086,
title = {Statistical Mechanical Approach to Lossy Data Compression:Theory and Practice},
author = {Tadaaki Hosaka and Yoshiyuki Kabashima},
journal= {arXiv preprint arXiv:cs/0509086},
year = {2009}
}
备注
10 pages, 2 figures, REVTEX preprint