基于传感器系统和可穿戴设备的肌电信号分析

Yu Seok Han, Su Bin Jang, Eun Bin An, Hyunwoo Choi, Dong Yea Hwang
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引用次数: 0

摘要

近年来,利用人工智能进行生物信号处理分析备受关注。在生物信号处理的情况下,由于用户的运动或其他生物信号引起的大量噪声,这是一个非常难以分析的信号。因此,不同的人可能会得到不同的诊断结果。为了解决这个问题,可以使用基于大数据的人工智能,通过学习算法。有了这项技术,就有可能在没有诊断专家的帮助下更简单、更准确地分析生物信号。然而,人工智能系统本身并不适合可穿戴应用。考虑到用户的便利性,本文开发了一种适合可穿戴应用的传感器系统,并开发了一种边缘设备,利用人工智能分析生物信号。通过传感器系统测量肌电(EMG)信号,并使用现场可编程门阵列(FPGA)边缘器件进行分析。通过这种方法,生物信号分析可以更容易、更准确地在用户需要的时刻进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EMG Signal Analysis Using Sensor System and Edge Device for Wearable Applications
Recently, bio-signal processing analysis using artificial intelligence is attracting great attention. In the case of bio-signal processing, it is a very difficult signal to analyze because it has a lot of noise induced by the users’ movement or other bio-signals. Therefore, different results depending on the person making the diagnosis may be obtained. To solve this problem, artificial intelligence through learning algorithm based on big data can be used. With this technique, it becomes possible to analyze bio-signals more simply and accurately without the help of a diagnostician. However, the artificial intelligence systems themselves are not suitable for wearable applications. In this paper, a sensor system was developed to be suitable for wearable applications in consideration of user convenience, and an edge device was also developed to analyze bio-signals with artificial intelligence. The electromyogram (EMG) signal was measured through the sensor system, and the analysis was performed with an edge device using field programmable gate array (FPGA). Through this, bio-signal analysis can be performed more easily, accurately, and at a user’s desired moment.
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