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High-Density Surface EMG-Based Gesture Recognition Using a 3D Convolutional Neural Network

机译:使用3D卷积神经网络的基于高密度表面肌电的手势识别

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摘要

High-density surface electromyography (HD-sEMG) and deep learning technology are becoming increasingly used in gesture recognition. Based on electrode grid data, information can be extracted in the form of images that are generated with instant values of multi-channel sEMG signals. In previous studies, image-based, two-dimensional convolutional neural networks (2D CNNs) have been applied in order to recognize patterns in the electrical activity of muscles from an instantaneous image. However, 2D CNNs with 2D kernels are unable to handle a sequence of images that carry information concerning how the instantaneous image evolves with time. This paper presents a 3D CNN with 3D kernels to capture both spatial and temporal structures from sequential sEMG images and investigates its performance on HD-sEMG-based gesture recognition in comparison to the 2D CNN. Extensive experiments were carried out on two benchmark datasets (i.e., CapgMyo DB-a and CSL-HDEMG). The results show that, where the same network architecture is used, 3D CNN can achieve a better performance than 2D CNN, especially for CSL-HDEMG, which contains the dynamic part of finger movement. For CapgMyo DB-a, the accuracy of 3D CNN was 1% higher than 2D CNN when the recognition window length was equal to 40 ms, and was 1.5% higher when equal to 150 ms. For CSL-HDEMG, the accuracies of 3D CNN were 15.3% and 18.6% higher than 2D CNN when the window length was equal to 40 ms and 150 ms, respectively. Furthermore, 3D CNN achieves a competitive performance in comparison to the baseline methods.
机译:高密度表面肌电图(HD-sEMG)和深度学习技术正越来越多地用于手势识别中。基于电极网格数据,可以以多通道sEMG信号的即时值生成的图像形式提取信息。在以前的研究中,已应用基于图像的二维卷积神经网络(2D CNN),以便从瞬时图像识别肌肉的电活动模式。但是,具有2D内核的2D CNN无法处理一系列图像,这些图像携带有关瞬时图像如何随时间演变的信息。本文介绍了一种具有3D内核的3D CNN,可从连续的sEMG图像中捕获空间和时间结构,并与2D CNN相比,研究了其在基于HD-sEMG的手势识别上的性能。在两个基准数据集(即CapgMyo DB-a和CSL-HDEMG)上进行了广泛的实验。结果表明,在使用相同的网络体系结构的情况下,3D CNN的性能要优于2D CNN,特别是对于包含手指运动的动态部分的CSL-HDEMG。对于CapgMyo DB-a,当识别窗口长度等于40 ms时3D CNN的精度比2D CNN高1%,而当等于150 ms时3D CNN的精度高1.5%。对于CSL-HDEMG,当窗口长度分别等于40 ms和150 ms时,3D CNN的准确性分别比2D CNN高15.3%和18.6%。此外,与基准方法相比,3D CNN具有竞争优势。

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