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Transfer learning for sEMG hand gestures recognition using convolutional neural networks

机译:使用卷积神经网络进行sEMG手势识别的转移学习

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In the realm of surface electromyography (sEMG) gesture recognition, deep learning algorithms are seldom employed. This is due in part to the large quantity of data required for them to train on. Consequently, it would be prohibitively time consuming for a single user to generate a sufficient amount of data for training such algorithms. In this paper, two datasets of 18 and 17 able-bodied participants respectively are recorded using a low-cost, low-sampling rate (200Hz), 8-channel, consumer-grade, dry electrode sEMG device named Myo armband (Thalmic Labs). A convolutional neural network (CNN) is augmented using transfer learning techniques to leverage inter-user data from the first dataset and alleviate the data generation burden imposed on a single individual. The results show that the proposed classifier is robust and precise enough to guide a 6DoF robotic arm (in conjunction with orientation data) with the same speed and precision as with a joystick. Furthermore, the proposed CNN achieves an average accuracy of 97.81% on seven hand/wrist gestures on the 17 participants of the second dataset.
机译:在表面肌电(SEMG)手势识别领域,很少采用深度学习算法。这部分是由于他们训练所需的大量数据。因此,单个用户生成足够数量的数据来训练这种算法将非常耗时。本文使用低成本,低采样率(200Hz),8通道消费级干电极sEMG设备Myo臂带(Thalmic Labs)分别记录了18个和17个健全参与者的两个数据集。卷积神经网络(CNN)使用转移学习技术进行了增强,以利用来自第一数据集的用户间数据并减轻施加给单个个体的数据生成负担。结果表明,所提出的分类器具有足够的鲁棒性和精确性,能够以与操纵杆相同的速度和精度来引导6DoF机械臂(结合方向数据)。此外,拟议的CNN在第二个数据集的17个参与者的七个手势上达到了97.81%的平均准确度。

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