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Classification of low level surface electromyogram using independent component analysis

机译:使用独立分量分析对低水平表面肌电图进行分类

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摘要

There is an urgent need for a simple yet robust system to identify natural hand actions and gestures for controlling prostheses and other computer-assisted devices. Surface electromyogram (SEMG) is a non-invasive measure of the muscle activities but is not reliable because there are a multiple simultaneously active muscles. This study proposes the use of independent component analysis (ICA) for SEMG to separate activity from different muscles. A mitigation strategy to overcome shortcomings related to order and magnitude ambiguity related to ICA has been developed. This is achieved by using a combination of unmixing matrix obtained from FastICA analysis and weight matrix derived from training of the supervised neural network corresponding to the specific user. This is referred to as ICANN (independent component analysis neural network combination). Experiments were conducted and the results demonstrate a marked improvement in the accuracy. The other advantages of this system are that it is suitable for real time operations and it is easy to train by a lay user.
机译:迫切需要一种简单而强大的系统来识别自然的手部动作和手势,以控制假肢和其他计算机辅助设备。表面肌电图(SEMG)是肌肉活动的一种非侵入性测量方法,但由于存在多个同时活动的肌肉,因此不可靠。这项研究建议使用独立成分分析(ICA)进行SEMG分离不同肌肉的活动。已经开发出缓解策略来克服与ICA相关的阶数和幅度模糊性相关的缺点。这是通过结合使用从FastICA分析获得的解混矩阵和从对应于特定用户的受监督神经网络训练中获得的权重矩阵的组合来实现的。这称为ICANN(独立组件分析神经网络组合)。进行了实验,结果证明了准确性的显着提高。该系统的其他优点是,它适用于实时操作,并且易于由非专业用户进行培训。

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    《Signal Processing, IET》 |2010年第5期|p.479-487|共9页
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