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Activity recognition of the torso based on surface electromyography for exoskeleton control

机译:基于表面肌电图的躯干活动识别,以控制外骨骼

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摘要

This paper presents an activity mode recognition approach to identify the motions of the human torso. The intent recognizer is based on decision tree classification in order to leverage its computational efficiency. The recognizer uses surface electromyography as the input and CART (classification and regression tree) as the classifier. The experimental results indicate that the recognizer can extract the user's intent within 215 ms, which is below the threshold a user will perceive. The approach achieves a low recognition error rate and a user-unperceived latency by using sliding overlapped analysis window. The intent recognizer is envisioned to a part a high-level supervisory controller for a powered backbone exoskeleton.
机译:本文提出了一种活动模式识别方法来识别人体躯干的运动。目的识别器基于决策树分类,以利用其计算效率。识别器使用表面肌电图作为输入,并使用CART(分类和回归树)作为分类器。实验结果表明,识别器可以在215毫秒内提取用户的意图,该意图低于用户可以感知的阈值。通过使用滑动重叠分析窗口,该方法实现了较低的识别错误率和用户无法感知的延迟。意图识别器的一部分设想为用于有源骨干外骨骼的高级监控控制器。

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