肌电图
信号(编程语言)
计算机科学
噪音(视频)
质量(理念)
离群值
数据质量
数据挖掘
信号处理
模式识别(心理学)
人工智能
工程类
物理医学与康复
雷达
电信
医学
程序设计语言
公制(单位)
哲学
图像(数学)
认识论
运营管理
作者
Emma Farago,Dawn MacIsaac,Michelle Suk,Adrian D. C. Chan
标识
DOI:10.1109/rbme.2022.3164797
摘要
Electromyography (EMG) signals are instrumental in a variety of applications including prosthetic control, muscle health assessment, rehabilitation, and workplace monitoring. Signal contaminants including noise, interference, and artifacts can degrade the quality of the EMG signal, leading to misinterpretation; therefore it is important to ensure that collected EMG signals are of sufficient quality prior to further analysis. A literature search was conducted to identify current approaches for detecting, identifying, and quantifying contaminants within surface EMG signals. We identified two main strategies: 1) bottom-up approaches for identifying specific and well-characterized contaminants and 2) top-down approaches for detecting anomalous EMG signals or outlier channels in high-density EMG arrays. The best type(s) of approach are dependent on the circumstances of data collection including the environment, the susceptibility of the application to contaminants, and the resilience of the application to contaminants. Further research is needed for assessing EMG with multiple simultaneous contaminants, identifying ground-truths for clean EMG data, and developing user-friendly and autonomous methods for EMG signal quality analysis.
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