Hybrid EMG classifier based on HMM and SVM for hand gesture recognition in prosthetics

Matteo Rossi, S. Benatti, Elisabetta Farella, L. Benini
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引用次数: 61

Abstract

Pattern recognition and classification algorithms are widely studied in natural gesture interfaces for upper limb prostheses. Robustness and accuracy of control systems are key challenge in such applications. To improve the classification performance, the conventional approach builds on classifier parameters tuning and/or feature extraction techniques. In this paper, we propose a complementary approach based on the combination of two heterogeneous classifiers: the Support Vector Machines and the Hidden Markov Models. This technique takes advantage of the robust time-independent classification of the SVM taking into account the information about history of the signal with the HMM. We demonstrate that, independently from the performance of the SVM, which can be further optimized with typical methods, the combined approach gains 12% recognition accuracy. We further comment on the applicability of this approach in resource constrained embedded implementations considering real-time requirements in the field of prosthesis control.
基于HMM和SVM的混合肌电分类器在假肢手势识别中的应用
模式识别和分类算法在上肢假肢自然手势界面中得到了广泛的研究。在此类应用中,控制系统的鲁棒性和准确性是关键挑战。为了提高分类性能,传统的方法建立在分类器参数调整和/或特征提取技术的基础上。在本文中,我们提出了一种基于支持向量机和隐马尔可夫模型两种异构分类器组合的互补方法。该方法利用了支持向量机的鲁棒时间无关分类特性,同时考虑了HMM信号的历史信息。我们证明,在不考虑支持向量机性能的情况下,该组合方法可以通过典型方法进一步优化,从而获得12%的识别准确率。考虑到假肢控制领域的实时需求,我们进一步评论了这种方法在资源受限的嵌入式实现中的适用性。
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