基于前臂肌电图信号的手势分类技术

T. Tsujimura, Kosuke Urata, K. Izumi
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引用次数: 1

摘要

本文描述了仅基于前臂肌电图信号来区分手势的分类技术。采用两种信号处理方法研究了手指手势与前臂肌电图的关系;经验阈值法和元启发式方法。前一种方法是根据事先实验确定的标准来判断肌肉的活动,并对肌肉的活动模式进行评价。后者学习肌电特征,应用遗传规划自动生成分类算法。通过对典型手势的识别实验,验证了所提方法的有效性。
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Hand sign classification techniques based on forearm electromyogram signals
This paper describes classification techniques to distinguish hand signs based only on electromyogram signals of a forearm. Relationship between finger gesture and forearm electromyogram is investigated by two signal processing approaches; an empirical thresholding method and meta heuristic method. The former method judges muscle activity according to the criteria experimentally determined in advance, and evaluates activity pattern of muscles. The latter learns the electromyogram characteristics and automatically creates classification algorithm applying genetic programming. Discrimination experiments of typical hand signs are carried out to evaluate the effectiveness of the proposed methods.
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