熵自适应在线压缩

S. Dolev, S. Frenkel, M. Kopeetsky
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引用次数: 2

摘要

自组织是基于适应性的。适应性应该从最基本的通信任务开始,比如对要传输或存储的信息进行编码。显然,传输的信号越少,传输中使用的能量就越少。本文提出了一种新的无界输入流的在线和熵自适应压缩方案。该方案扩展了窗口字典Lempel-Ziv压缩,具有自适应能力,适合于具有非平稳熵的在线压缩输入。具体来说,窗口字典的大小以一种自适应的方式改变,以适应当前输入的最佳压缩率。本文介绍并分析了在线熵自适应压缩方案(EAC),该方案检查下一个输入部分上所有可能的滑动窗口大小,以选择该部分的最佳窗口大小,该大小意味着最佳压缩比。然后将找到的大小用于该部分的实际压缩。提出了一种逐块优化参数的自适应编码方案,并将压缩性能建立在Lempel Ziv算法的最优性证明基础上。EAC方案在不同类型的文件(docx, ppt, jpeg, xls)和作为齐次马尔可夫链片段生成的合成文件上进行了测试。我们的实验表明,当在传输(或压缩)文件的在线逐块压缩范围内进行检查时,EAC方案通常提供比LZ77更高的压缩比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Entropy Adaptive On-Line Compression
Self-Organization is based on adaptivity. Adaptivity should start with the very basic fundamental communication tasks such as encoding the information to be transmitted or stored. Obviously, the less signal transmitted the less energy in transmission used. In this paper we present a novel on-line and entropy adaptive compression scheme for streaming unbounded length inputs. The scheme extends the window dictionary Lempel-Ziv compression, is adaptive and is tailored to on-line compress inputs with non stationary entropy. Specifically, the window dictionary size is changed in an adaptive manner to fit the current best compression rate for the input. On-line Entropy Adaptive Compression scheme (EAC), that is introduced and analyzed in this paper, examines all possible sliding window sizes over the next input portion to choose the optimal window size for this portion, a size that implies the best compression ratio. The size found is then used in the actual compression of this portion. We suggest an adaptive encoding scheme, which optimizes the parameters block by block, and base the compression performance on the optimality proof of Lempel Ziv algorithm when applied to blocks. The EAC scheme was tested over files of different types (docx, ppt, jpeg, xls) and over synthesized files that were generated as segments of homogeneous Markov Chains. Our experiments demonstrate that the EAC scheme typically provides a higher compression ratio than LZ77 does, when examined in the scope of on-line per-block compression of transmitted (or compressed) files.
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