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A Novel Adaptive Mutation PSO Optimized SVM Algorithm for sEMG-Based Gesture Recognition

机译:一种新型自适应突变PSO优化SVM基于Semg的手势识别的SVM算法

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In the field of noncontact human-computer interaction, it is of crucial importance to distinguish different surface electromyography (sEMG) gestures accurately for intelligent prosthetic control. Gesture recognition based on low sampling frequency sEMG signal can extend the application of wearable low-cost EMG sensor (for example, MYO bracelet) in motion control. In this paper, a combination of sEMG gesture recognition consisting of feature extraction, genetic algorithm (GA), and support vector machine (SVM) model is proposed. Particularly, a novel adaptive mutation particle swarm optimization (AMPSO) algorithm is proposed to optimize the parameters of SVM; moreover, a new calculation method of mutation probability is also defined. The AMPSO-SVM model based on combination processing is successfully applied to MYO bracelet dataset, and four gesture classifications are carried out. Furthermore, AMPSO-SVM is compared with PSO-SVM, GS-SVM, and BP. The sEMG gesture recognition rate of AMPSO-SVM is 0.975, PSO-SVM is 0.9463, GS-SVM is 0.9093, and BP is 0.9019. The experimental results show that AMPSO-SVM is effective for low-frequency sEMG signals of different gestures.
机译:在非接触式人计算机相互作用领域,对于智能假肢控制来区分不同的表面肌电图(SEMG)手势至关重要。基于低采样频率半信号的手势识别可以在运动控制中延长可穿戴低成本EMG传感器(例如,Myo手镯)的应用。本文提出了由特征提取,遗传算法(GA)和支持向量机(SVM)模型组成的SEMG手势识别的组合。特别是,提出了一种新的自适应突变粒子群优化(AMPSO)算法以优化SVM的参数;此外,还确定了一种新的突变概率的计算方法。基于组合处理的AMPSO-SVM模型成功应用于Myo Bracelet数据集,并执行四个手势分类。此外,将AMPSO-SVM与PSO-SVM,GS-SVM和BP进行比较。 AMPSO-SVM的SEMG手势识别率为0.975,PSO-SVM为0.9463,GS-SVM为0.9093,BP为0.9019。实验结果表明,AMPSO-SVM对于不同手势的低频半信号是有效的。

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