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An incremental EMG classification model to detect and recognize randomly-occurred outlier motion

机译:用于检测和识别随机发生的异常运动的增量式EMG分类模型

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Traditional EMG-motion recognition methods are only able to recognize target motions that presented in the training phase, but cannot detect randomly-occurred outlier motions that did not present before. Here, a hybrid classifier that combines one-class SVMs and a multi-class LDA was proposed to perform recognition on target classes and rejection on outlier classes. The classification ability of the hybrid classifier can incrementally grow via online learning the data of outlier classes. Extensive experiments on EMG-based hand-motion recognition were conducted to verify the performance of the incremental hybrid classifier (IHC). The mean recognition accuracy on target classes of IHC is 92%, which is 23% higher than that of the normal MLP. Moreover, IHC has the ability to detect outlier patterns that MLP would misclassify to target classes.
机译:传统的EMG运动识别方法只能识别训练阶段出现的目标运动,而无法检测到以前没有出现过的随机发生的异常运动。在此,提出了一种将一类SVM和多类LDA相结合的混合分类器,以对目标类别进行识别,并对异常类别进行拒绝。混合分类器的分类能力可以通过在线学习异常类的数据来逐步增长。进行了基于EMG的手势识别的广泛实验,以验证增量混合分类器(IHC)的性能。 IHC目标类别的平均识别准确度为92%,比正常的MLP高23%。此外,IHC能够检测MLP误分类为目标类别的异常模式。

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