基于dct的有损压缩误码感知量化

Jialing Zhang, Jiaxi Chen, Aekyeung Moon, Xiaoyan Zhuo, S. Son
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引用次数: 2

摘要

高性能计算(HPC)系统运行的科学模拟会产生大量的数据,这会导致极端的I/O瓶颈和巨大的存储负担。应用压缩技术可以通过减少数据大小来减轻这种开销。与传统的无损压缩不同,SZ、ZFP和DCTZ等错误控制的有损压缩技术正逐渐受到重视,这些技术是为科学家们设计的,不仅要求高压缩比,而且要保证一定程度的精度。尽管近年来的有损压缩器,特别是基于dct的压缩器,由于其高压缩编码,其码率失真效率有很大的发展前景,但整体编码结构仍然比较保守,需要在不同的编码可能性和不同的码率失真之间进行量化平衡。本文旨在通过优化量化模型和编码机制来提高基于dct压缩器(即DCTZ)的性能。具体而言,我们提出了一种基于DCTZ框架的位高效量化器,开发了一种独特的基于量化表的排序机制,并扩展了编码索引。我们使用真实世界的HPC数据集来评估优化后的DCTZ在速率失真方面的性能。我们的实验评估表明,平均而言,我们提出的方法可以将原始DCTZ的压缩比提高1.38倍。此外,结合扩展的编码机制,优化后的DCTZ表现出与最先进的有损压缩器SZ和ZFP的竞争性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bit-Error Aware Quantization for DCT-based Lossy Compression
Scientific simulations run by high-performance computing (HPC) systems produce a large amount of data, which causes an extreme I/O bottleneck and a huge storage burden. Applying compression techniques can mitigate such overheads through reducing the data size. Unlike traditional lossless compressions, error-controlled lossy compressions, such as SZ, ZFP, and DCTZ, designed for scientists who demand not only high compression ratios but also a guarantee of certain degree of precision, is coming into prominence. While rate-distortion efficiency of recent lossy compressors, especially the DCT-based one, is promising due to its high-compression encoding, the overall coding architecture is still conservative, necessitating the quantization that strikes a balance between different encoding possibilities and varying rate-distortions. In this paper, we aim to improve the performance of DCT-based compressor, namely DCTZ, by optimizing the quantization model and encoding mechanism. Specifically, we propose a bit-efficient quantizer based on the DCTZ framework, develop a unique ordering mechanism based on the quantization table, and extend the encoding index. We evaluate the performance of our optimized DCTZ in terms of rate-distortion using real-world HPC datasets. Our experimental evaluations demonstrate that, on average, our proposed approach can improve the compression ratio of the original DCTZ by 1.38x. Moreover, combined with the extended encoding mechanism, the optimized DCTZ shows a competitive performance with state-of-the-art lossy compressors, SZ and ZFP.
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