基于在线学习方法的自适应肌电假手——人与自适应机器相互适应的研究

R. Kato, T. Fujita, H. Yokoi, T. Arai
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引用次数: 27

摘要

我们开发了一种新的适应性肌电假手,它可以并行执行识别过程和学习过程,并且可以跟上肌电信号(EMG)与期望运动之间映射的变化。所提出的假手的肌电-运动分类器是在输入运动是连续的假设下完成的,而教学运动本质上是模糊的,因此可以实现学习数据的自动添加、消除和选择。利用我们提出的假手系统对8种前臂运动进行了识别实验,结果表明,即使在映射发生变化的情况下,也能保持稳定而高效的识别率。此外,我们利用能力测试和f-MRI分析了人类和适应性假手之间的相互适应,并阐明了每个适应过程
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptable EMG Prosthetic Hand using On-line Learning Method -Investigation of Mutual Adaptation between Human and Adaptable Machine
We developed a new adaptable EMG prosthetic hand, which executes recognition process and learning process in parallel and can keep up with change in the mapping between an electromyographic signals (EMG) to the desired motion, for amputee. EMG-to-motion classifier which used in proposed prosthetic hand is done under the assumptions that the input motions are continuous, and the teaching motions are ambiguous in nature, therefore, automatic addition, elimination and selection of learning data are possible. Using our proposed prosthetic hand system, we conducted experiments to discriminate eight forearm motions, with the results, a stable and highly effective discrimination rate was achieved and maintained even when changes occurred in the mapping. Moreover, we analyzed mutual adaptation between human and adaptable prosthetic hand using ability test and f-MRI, and clarified each adaptation process
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