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Surface-Electromyography-Based Gesture Recognition by Multi-View Deep Learning

机译:基于多视图深度学习的基于表面电泳的手势识别

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摘要

Gesture recognition using sparse multichannel surface electromyography (sEMG) is a challenging problem, and the solutions are far from optimal from the point of view of muscle-computer interface. In this paper, we address this problem from the context of multi-view deep learning. A novel multi-view convolutional neural network (CNN) framework is proposed by combining classical sEMG feature sets with a CNN-based deep learning model. The framework consists of two parts. In the first part, multi-view representations of sEMG are modeled in parallel by a multistream CNN, and a performance-based view construction strategy is proposed to choose the most discriminative views from classical feature sets for sEMG-based gesture recognition. In the second part, the learned multi-view deep features are fused through a view aggregation network composed of early and late fusion subnetworks, taking advantage of both early and late fusion of learned multi-view deep features. Evaluations on 11 sparse multichannel sEMG databases as well as five databases with both sEMG and inertial measurement unit data demonstrate that our multi-view framework outperforms single-view methods on both unimodal and multimodal sEMG data streams.
机译:使用稀疏多通道表面肌电图(sEMG)进行手势识别是一个具有挑战性的问题,从肌肉计算机界面的角度来看,解决方案远非最佳。在本文中,我们从多视图深度学习的上下文中解决了这个问题。通过将经典的sEMG特征集与基于CNN的深度学习模型相结合,提出了一种新颖的多视图卷积神经网络(CNN)框架。该框架由两部分组成。在第一部分中,通过多流CNN并行建模sEMG的多视图表示,并提出了一种基于性能的视图构建策略,以从经典特征集中选择最具区分性的视图用于基于sEMG的手势识别。在第二部分中,将学习的多视图深度特征通过包含早期和后期融合子网络的视图聚合网络进行融合,同时利用学习的多视图深度特征的早期和晚期融合。对11个稀疏多通道sEMG数据库以及具有sEMG和惯性测量单位数据的五个数据库的评估表明,在单峰和多峰sEMG数据流上,我们的多视图框架优于单视图方法。

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