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Bacterial memetic algorithm based feature selection for surface EMG based hand motion recognition in long-term use

机译:基于细菌模因算法的特征选择用于基于表面肌电的长期使用手势识别

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摘要

Pattern recognition algorithms have been applied in the surface electromyography (sEMG) based hand motion recognition for their promising accuracy. Research on proposing new features, improving classifiers and their combinations has been extensively conducted in the past decade. Meanwhile, the feature projection methodology, has been routinely exploited between the phases of feature extraction and classification. However, limited publications have been seen addressing the feature selection, which is a vital alternative in dimensionality reduction for pattern recognition. Recent development of sEMG acquisition devices have contributed to more signal capturing sites or even detection arrays of high density in the application. In this paper, the memetic evolutionary method named bacterial memetic algorithm (BMA) has been adopted as the feature selection strategy for sEMG based hand motion recognition. A case study of 4 subjects in long-term use has been conducted to demonstrate the feasibility of the proposed strategy, that comparable recognition accuracy with reduced computation cost has been achieved. A further discussion on the feature redundancy and inter-subject use has also been demonstrated based on the experimental results derived from BMA based feature selection.
机译:模式识别算法已经在基于表面肌电图(sEMG)的手部动作识别中得到了应用,具有很高的准确性。在过去的十年中,对提出新功能,改进分类器及其组合进行了广泛的研究。同时,在特征提取和分类的各个阶段之间常规地利用了特征投影方法。但是,关于功能选择的出版物很少,这是减少尺寸以进行模式识别的重要选择。 sEMG采集设备的最新发展为应用中更多的信号捕获位点或什至是高密度检测阵列做出了贡献。本文采用基于细菌模因算法(BMA)的模因进化方法作为基于sEMG的手势识别的特征选择策略。对长期使用4个对象的案例进行了研究,以证明所提出策略的可行性,从而实现了可比的识别精度并降低了计算成本。基于从基于BMA的特征选择中获得的实验结果,还证明了关于特征冗余和对象间使用的进一步讨论。

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