走向无处不在的基于移动计算的人工腿控制

R. Hernandez, Jason Kane, Fan Zhang, Xiaorong Zhang, H. Huang
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引用次数: 1

摘要

本文提出了一种基于移动处理器技术(Intel Atom™Z530处理器)的用于控制假肢的实时神经机接口(NMI)的快速原型开发方法。通过有效地利用移动嵌入式CPU的架构特征,我们实现了一种基于神经肌肉-机械融合和步态相依赖支持向量机(SVM)分类的决策算法,以满足苛刻的性能约束。为了证明基于实时移动计算的NMI的可行性,在健体被试上进行了实时实验,窗口增量为50ms。实验表明,基于移动计算的NMI对四种主要的人类运动任务(平地行走、楼梯上升、楼梯下降和站立)提供了快速准确的分类,并且比等效的MATLAB实现提高了46倍的速度。在低功耗的情况下,测试的准确率达到96.31%。离线分析表明,只需对应用程序进行少量修改,准确率就可以提高到98.87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards ubiquitous mobile-computing-based artificial leg control
This paper presents a rapid prototype approach for the development of a real-time capable neural-machine-interface (NMI) for control of artificial legs based on mobile processor technology (Intel Atom™ Z530 Processor.) By effectively exploiting the architectural features of a mobile embedded CPU, we implemented a decision-making algorithm, based on neuromuscular-mechanical fusion and gait phase-dependent support vector machines (SVM) classification to meet the demanding performance constraints. To demonstrate the feasibility of a real-time mobile computing based NMI, real-time experiments were performed on an able bodied subject with window increments of 50ms. The experiments showed that the mobile computing based NMI provided fast and accurate classifications of four major human locomotion tasks (level-ground walking, stair ascent, stair descent, and standing) and a 46X speedup over an equivalent MATLAB implementation. The testing yielded accuracies of 96.31% with low power consumption. An offline analysis showed the accuracy could be increased to 98.87% with minor modifications to the application.
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