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首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Classification of Electromyographic Hand Gesture Signals Using Modified Fuzzy C-Means Clustering and Two-Step Machine Learning Approach
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Classification of Electromyographic Hand Gesture Signals Using Modified Fuzzy C-Means Clustering and Two-Step Machine Learning Approach

机译:使用改进的模糊C-MERIAL聚类和两步机学习方法的电拍摄手势信号分类

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摘要

Understanding and classifying electromyogram (EMG) signals is of significance for dexterous prosthetic hand control, sign languages, grasp recognition, human-machine interaction, etc.. The existing research of EMG-based hand gesture classification faces the challenges of unsatisfied classification accuracy, insufficient generalization ability, lack of training data and weak robustness. To address these problems, this paper combines unsupervised and supervised learning methods to classify an EMG dataset consisting of 10 classes of hand gestures. To lessen the difficulty of classification, clustering methods including subtractive clustering and fuzzy c-means (FCM) clustering algorithms are employed first to obtain the initial partition of the inputs. In particular, modified FCM algorithm is proposed to accustom the conventional FCM to the multi-class classification problem. Based on the grouping information obtained from clustering, a type of two-step supervised learning approach is proposed. Specifically, a top-classifier and three sub-classifiers integrated with windowing method and majority voting are employed to accomplish the two-step classification. The results demonstrate that the proposed method achieves 100% test accuracy and the strongest robustness compared to the conventional machine learning approaches, which shows the potential for industrial and healthcare applications, such as movement intention detection, grasp recognition and dexterous prostheses control.
机译:理解和分类电灰度(EMG)信号对于灵巧假肢手动控制,标志语言,掌握识别,人机互动等显着性。基于EMG的手势分类的现有研究面临着不满足的分类准确性的挑战,不足泛化能力,缺乏培训数据和弱势鲁棒性。为了解决这些问题,本文结合了无监督和监督的学习方法来分类由10类手势组成的EMG数据集。为了减少分类的难度,首先采用包括减法聚类和模糊C-MATION(FCM)聚类算法的聚类方法来获得输入的初始分区。特别地,提出了修改的FCM算法以习惯传统的FCM到多级分类问题。基于从聚类获得的分组信息,提出了一种类型的两步监督学习方法。具体地,采用顶级分类器和三个与窗口方法和多数投票集成的子分类器来实现两步分类。结果表明,与传统机器学习方法相比,该方法达到了100%的测试精度和最强的稳健性,这表明了工业和医疗保健应用的潜力,例如运动意向检测,掌握识别和灵巧的假体控制。

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