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手部截肢患者对机器人手的自然控制能力。

Natural control capabilities of robotic hands by hand amputated subjects.

作者信息

Atzori Manfredo, Gijsberts Arjan, Caputo Barbara, Muller Henning

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:4362-5. doi: 10.1109/EMBC.2014.6944590.

Abstract

People with transradial hand amputations who own a myoelectric prosthesis currently have some control capabilities via sEMG. However, the control systems are still limited and not natural. The Ninapro project is aiming at helping the scientific community to overcome these limits through the creation of publicly available electromyography data sources to develop and test machine learning algorithms. In this paper we describe the movement classification results gained from three subjects with an homogeneous level of amputation, and we compare them with the results of 40 intact subjects. The number of considered subjects can seem small at first sight, but it is not considering the literature of the field (which has to face the difficulty of recruiting trans-radial hand amputated subjects). The classification is performed with four different classifiers and the obtained balanced classification rates are up to 58.6% on 50 movements, which is an excellent result compared to the current literature. Successively, for each subject we find a subset of up to 9 highly independent movements, (defined as movements that can be distinguished with more than 90% accuracy), which is a deeply innovative step in literature. The natural control of a robotic hand in so many movements could lead to an immediate progress in robotic hand prosthetics and it could deeply change the quality of life of amputated subjects.

摘要

目前,拥有肌电假肢的经桡骨手部截肢者可通过表面肌电图(sEMG)实现一定程度的控制。然而,控制系统仍存在局限性且不够自然。Ninapro项目旨在通过创建公开可用的肌电图数据源来帮助科学界克服这些限制,以开发和测试机器学习算法。在本文中,我们描述了三名截肢程度相同的受试者的运动分类结果,并将其与40名未截肢受试者的结果进行比较。乍一看,所考虑的受试者数量似乎较少,但考虑到该领域的文献(招募经桡骨手部截肢受试者存在困难),情况并非如此。使用四种不同的分类器进行分类,在50种运动上获得的平衡分类率高达58.6%,与当前文献相比,这是一个优异的结果。随后,对于每个受试者,我们找到了一个最多包含9种高度独立运动的子集(定义为可通过超过90%的准确率区分的运动),这在文献中是一个极具创新性的步骤。在如此多的运动中实现机械手的自然控制可能会立即推动机械手假肢技术取得进展,并可能深刻改变截肢者的生活质量。

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