Exploring Arm Posture and Temporal Variability in Myoelectric Hand Gesture Recognition

B. Milosevic, Elisabetta Farella, Simone Benaui
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引用次数: 31

Abstract

Hand gesture recognition based on myoelectric (EMG) signals is an innovative approach for the development of intuitive interaction devices, ranging from poliarticulated prosthetic hands to intuitive robot and mobile interfaces. Their study and development in controlled environments provides promising results, but effective real-world adoption is still limited due to reliability problems, such as motion artifacts and arm posture, temporal variability and issues caused by the re-positioning of sensors at each use. In this work, we present an EMG dataset collected with the aim to explore postural and temporal variability in the recognition of arm gestures. Its collection of gestures executed in 4 arm postures over 8 days allows to evaluate the impact of such variability on classification performance. We implemented and tested State-of-the-Art (SoA) recognition approaches analyzing the impact of different training strategies. Moreover, we compared the computational and memory requirements of the considered algorithms, providing an additional evaluation criteria useful for real-time implementation. Results show a decrease in the recognition of inter-posture and inter-day gestures up to 20%. The provided dataset will allow further exploration of such effects and the development of effective training and recognition strategies.
肌电手势识别中手臂姿势和时间变异性的研究
基于肌电(EMG)信号的手势识别是开发直观交互设备的一种创新方法,从政治假肢到直观的机器人和移动界面。他们在受控环境中的研究和发展提供了有希望的结果,但由于可靠性问题,如运动伪影和手臂姿势,时间变化以及每次使用时传感器重新定位引起的问题,有效的现实应用仍然有限。在这项工作中,我们提供了一个肌电图数据集,旨在探索手臂手势识别中的姿势和时间变化。它收集了在8天内以4种手臂姿势执行的手势,可以评估这种可变性对分类性能的影响。我们实施并测试了最先进的(SoA)识别方法,分析了不同培训策略的影响。此外,我们比较了所考虑的算法的计算和内存需求,为实时实现提供了额外的评估标准。结果显示,对不同姿势和日间姿势的识别能力下降了20%。所提供的数据集将允许进一步探索这种影响,并制定有效的培训和识别策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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