神经分布式压缩器发现分选功能

Ezgi Ozyilkan;Johannes Ballé;Elza Erkip
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引用次数: 0

摘要

我们考虑的是当解码器可以无损访问相关信息源时,对信息源进行有损压缩的问题。这种设置也称为 Wyner-Ziv 问题,是分布式信源编码的一个特例。时至今日,针对 Wyner-Ziv 问题的实用方法既没有得到充分发展,也没有得到深入研究。我们提出了一种基于机器学习的数据驱动方法,该方法利用了人工神经网络的通用函数逼近能力。我们发现,基于神经网络的压缩方案以变异矢量量化为基础,恢复了 Wyner-Ziv 设置的最佳理论解的一些原则,如源空间的分档以及量化指数和侧信息的最佳组合。虽然没有施加利用源分布知识的结构,但这些行为还是出现了。分选是信息论证明和方法中广泛使用的工具,据我们所知,这是第一次明确观察到它出现在数据驱动学习中。
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Neural Distributed Compressor Discovers Binning
We consider lossy compression of an information source when the decoder has lossless access to a correlated one. This setup, also known as the Wyner-Ziv problem, is a special case of distributed source coding. To this day, practical approaches for the Wyner-Ziv problem have neither been fully developed nor heavily investigated. We propose a data-driven method based on machine learning that leverages the universal function approximation capability of artificial neural networks. We find that our neural network-based compression scheme, based on variational vector quantization, recovers some principles of the optimum theoretical solution of the Wyner-Ziv setup, such as binning in the source space as well as optimal combination of the quantization index and side information, for exemplary sources. These behaviors emerge although no structure exploiting knowledge of the source distributions was imposed. Binning is a widely used tool in information theoretic proofs and methods, and to our knowledge, this is the first time it has been explicitly observed to emerge from data-driven learning.
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