一种简单高效的肌电表面信号近无损压缩算法

G. Campobello, C. D. Marchis, G. Gugliandolo, Alberto Giacobbe, G. Crupi, N. Donato
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引用次数: 0

摘要

本文提出了一种新的肌电信号近无损压缩算法,并对其性能进行了实际肌电测量评估。与其他近无损算法不同,该算法不依赖于矩阵分解或复杂的变换,而是利用直接的动态范围压缩和简单的编码技术。因此,考虑到其固有的低复杂性和低内存需求,它可以很容易地在资源受限的微控制器中实现,如低成本测量仪器和电子健康物联网应用。该算法已经在一个数据集上进行了测试,该数据集包括在8个不同受试者的真实测量活动中进行的动态肌电信号测量,其中,对于每个受试者,在踩踏板期间记录了来自8个不同肌肉的肌电信号。分析和实验结果表明,所提出的压缩技术能够实现高达80%的压缩比(CR),而均方根失真(PRD)百分比在0.34%至13.7%之间。此外,与文献中描述的其他压缩算法不同,本文提出的算法允许先验地固定最大绝对误差,从而可以在压缩过程之外控制和限制所需的失真水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simple and Efficient Near-lossless Compression Algorithm for Surface ElectroMyoGraphy Signals
In this paper, a novel near-lossless compression algorithm meant for electromyography (EMG) signals is proposed and its performance is evaluated towards real EMG measurements. Differently from other near-lossless algorithms, the proposed one does not rely on either matrix decompositions or complex transformations but exploits only a straight-forward dynamic range compression and a simple encoding technique. Therefore, considering its inherent low complexity and low memory requirements, it can be easily implemented in resources constrained microcontrollers as those included in low-cost measurement instruments and e-Health Internet of Things applications. The algorithm has been tested on a dataset including dynamic EMG measurements carried out in a real-world measurement campaign on 8 different subjects, where, for each subject, the EMG signals were recorded from 8 different muscles during a pedaling session. Analytical and experimental results revealed that the proposed compression technique is able to achieve a compression ratio (CR) up to 80% with a percentage root mean square distortion (PRD) in the range between 0.34% and 13.7%. Moreover, differently from the other compression algorithms described in the literature, the proposed one allows fixing the maximum absolute error a priori thus making it possible to control and limit the desired distortion level besides the compression procedure.
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