噪声数据的通用无噪声压缩

G. I. Shamir, T. Tjalkens, Frans M. J. Willems
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引用次数: 3

摘要

我们研究了被噪声破坏的离散数据序列的通用压缩。我们表明,虽然正如预期的那样,存在许多情况下这些序列的熵比原始数据的熵增加,但有些令人惊讶和反直觉的是,这些序列的通用编码冗余与原始数据相比不会增加。在平稳无记忆情况下,我们导出了保证该冗余不从原始序列冗余渐近(一阶)减少的条件。然后,我们给出了编码有限长度(大)噪声块的冗余边界,这些噪声块由固定的无记忆源产生,并被某些特定的无记忆信道破坏。最后,我们提出了一种序列概率估计方法,可用于压缩被噪声信道损坏的二进制数据。虽然在压缩噪声损坏的短块数据时使用这种方法有很多好处,但新方法更通用,并且允许对二进制序列进行顺序压缩,其中比特的概率已知在任何给定区间内(不一定在0和1之间)。此外,这种方法有许多不同的应用,包括预测,顺序信道估计等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Universal Noiseless Compression for Noisy Data
We study universal compression for discrete data sequences that were corrupted by noise. We show that while, as expected, there exist many cases in which the entropy of these sequences increases from that of the original data, somewhat surprisingly and counter-intuitively, universal coding redundancy of such sequences cannot increase compared to the original data. We derive conditions that guarantee that this redundancy does not decrease asymptotically (in first order) from the original sequence redundancy in the stationary memoryless case. We then provide bounds on the redundancy for coding finite length (large) noisy blocks generated by stationary memoryless sources and corrupted by some specific memoryless channels. Finally, we propose a sequential probability estimation method that can be used to compress binary data corrupted by some noisy channel. While there is much benefit in using this method in compressing short blocks of noise corrupted data, the new method is more general and allows sequential compression of binary sequences for which the probability of a bit is known to be limited within any given interval (not necessarily between 0 and 1). Additionally, this method has many different applications, including, prediction, sequential channel estimation, and others.
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