This paper considers lossless image compression and presents a learned compression system that can achieve state-of-the-art lossless compression performance but uses only 59K parameters, which is more than 30x less than other learned systems proposed recently in the literature. The explored system is based on a learned pixel-by-pixel lossless image compression method, where each pixel's probability distribution parameters are obtained by processing the pixel's causal neighborhood (i.e. previously encoded/decoded pixels) with a simple neural network comprising 59K parameters. This causality causes the decoder to operate sequentially, i.e. the neural network has to be evaluated for each pixel sequentially, which increases decoding time significantly with common GPU software and hardware. To reduce the decoding time, parallel decoding algorithms are proposed and implemented. The obtained lossless image compression system is compared to traditional and learned systems in the literature in terms of compression performance, encoding-decoding times and computational complexity.
翻译:本文考虑无损图像压缩, 并展示一个可以实现最先进的无损压缩性能但仅使用59K参数的精学压缩系统, 这个参数比文献中最近提议的其他学习性系统少30倍以上。 探索的系统基于一个学习的像素比素比素的无损图像压缩方法, 每个像素的概率分布参数都是通过处理像素的因果关系区( 即先前的编码/ 编码像素) 和一个由59K参数组成的简单神经网络获得的。 这种因果关系导致解码器按顺序运行, 也就是说, 神经网络必须按每个像素顺序评估, 从而大大增加与通用 GPU 软件和硬件的解码时间。 为了缩短解码时间, 提议并实施平行解码算法。 获得的无损图像压缩系统与文献中的传统和学习系统在压缩性能、 编码- 解码时间和计算复杂性方面进行比较 。