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Multi-layer perceptron training algorithms for pattern recognition of myoelectric signals

机译:多层Perceptron训练算法,用于磁铁信号的模式识别

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A challenge in using myoelectric signals in control of motorised prostheses is achieving effective signal pattern recognition and robust classification of intended motions. In this paper, the performance of Matlab's Multi-layer Perceptron (MLP) backpropogation training algorithms in motion classification were assessed. The test and evaluation platform used was “BioPatRec”, a Matlab-based open-source prosthetic control development environment, together with algorithms sourced from Matlab's neural network toolbox. The algorithms were used to interpret multielectrode myoelectric signals for motion classification, with the aim of finding the best performing algorithm and network model. The results showed that Matlab's trainlm and trainrp algorithms could achieve a higher accuracy than other tested MLP training algorithms (94.13 ± 0.037% and 91.09 ± 0.047%, respectively). Discussion of these results investigates significant features to obtain the highest performance.
机译:在控制电动假体控制中使用肌电信号的挑战正在实现有效的信号模式识别和预期运动的鲁棒分类。在本文中,评估了MATLAB的多层Perceptron(MLP)备p训练算法的运动分类中的性能。所使用的测试和评估平台是“Biopatrec”,基于Matlab的开源假体控制开发环境,以及来自Matlab的神经网络工具箱的算法。该算法用于解释用于运动分类的多电极磁电信号,目的是找到最佳性能的算法和网络模型。结果表明,Matlab的TrainLM和TrainRP算法可以达到比其他测试的MLP训练算法更高的精度(94.13±0.037%和91.09±0.047%)。讨论这些结果研究了获得最高性能的重要特征。

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