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A real-time leg motion recognition system by using Mahalanobis distance and LS_SVM

机译:利用马氏距离和LS_SVM的实时腿部动作识别系统

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With the increasing requirements of the society to help those with special needs (e.g., physically disabilities, the old and the injured individuals), lower limb rehabilitative robot has been expected to have a significant potential foreground. Surface electromyography (sEMG) signal will be utilized as the intention command to control the lower limb assisting robot in this research. Six types of leg movements, collected by placing electrodes on four appointed muscles, are involved. In order to realize on-line controlling, the recognition accuracy and the amount of data are two critical factors. Comparing various feature extraction approaches in time domain and time-frequent domain, this paper proposes a real-time control system with 99.44% identification rate and low dimension feature vectors that are selected by Mahalanobis distance (MD). Furthermore, a specific least squares support vector machine (LS_SVM) is designed to conduct the classification task in this context.
机译:随着社会对帮助有特殊需求的人(例如,身体残疾,老年人和受伤的人)的要求不断提高,人们期望下肢康复机器人具有巨大的潜在前景。在这项研究中,表面肌电图(sEMG)信号将用作控制下肢辅助机器人的意图命令。通过在四个指定的肌肉上放置电极来收集六种类型的腿部运动。为了实现在线控制,识别精度和数据量是两个关键因素。通过比较时域和时频域中的各种特征提取方法,提出了一种具有99.44%识别率和由马氏距离(MD)选择的低维特征向量的实时控制系统。此外,特定的最小二乘支持向量机(LS_SVM)被设计为在这种情况下执行分类任务。

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