基于奇异值分解的高效多通道脑电信号近无损压缩算法的理论与实验研究

G. Campobello, Angelica Quercia, G. Gugliandolo, Antonino Segreto, E. Tatti, M. Ghilardi, G. Crupi, A. Quartarone, N. Donato
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引用次数: 0

摘要

在本文中,我们研究了最近提出的一种专为多通道脑电图(EEG)信号设计的近无损压缩算法的性能。该算法利用了通常对脑电信号进行奇异值分解(SVD)去噪和去除不需要的伪影的事实,并且同样的SVD也可以用于压缩目的。本文导出了期望压缩比的解析表达式和重构后算法引入的最大失真的上界。此外,在包含与执行不同感觉运动任务的受试者相关的真实脑电图信号的扩展数据集上,研究了该算法的性能。本文的分析和实验结果表明,该算法能够通过实现0.01%左右的百分比均方根失真(PRD)来获得与脑电信号通道数成正比的压缩比。特别是,与具有类似复杂性的其他最先进的压缩算法相比,所实现的PRD非常低。此外,该算法允许先验地确定所需的最大绝对误差。因此,我们可以认为该算法是一种有效的工具,可以减少记录数据所需的内存,同时在压缩的同时保留信号的实际临床信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Theoretical and Experimental Investigation of an Efficient SVD-based Near-lossless Compression Algorithm for Multichannel EEG Signals
In this paper, we investigate performance of a re-cently proposed near-lossless compression algorithm specifically devised for multichannel electroencephalograph (EEG) signals. The algorithm exploits the fact that singular value decomposition (SVD) is usually performed on EEG signals for denoising and removing unwanted artifacts and that the same SVD can be used for compression purpose. In this paper, we derived an analytical expression for the expected compression ratio and an upper bound for the maximum distortion introduced by the algorithm after reconstruction. Moreover, performances of the algorithm have been investigated on an extended dataset containing real EEG signals related to subjects performing different sensorimotor tasks. Both analytical and experimental results reported in this paper show that the algorithm is able to attain a compression ratio proportional to the number of EEG channels by achieving a percentage root mean square distortion (PRD) in the order of 0.01 %. In particular, the achieved PRD is very low if compared with other state-of-the-art compression algorithms with similar complexity. Moreover, the algorithm allows the desired maximum absolute error to be fixed a priori. Therefore, we can consider this algorithm as an efficient tool for reducing the amount of memory necessary to record data and, at the same time, preserving actual clinical information of the signals besides compression.
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