Advances in biosignal signal processing and machine learning, in particular Deep Neural Networks (DNNs), have paved the way for the development of innovative Human-Machine Interfaces for decoding the human intent and controlling artificial limbs. DNN models have shown promising results with respect to other algorithms for decoding muscle electrical activity, especially for recognition of hand gestures. Such data-driven models, however, have been challenged by their need for a large number of trainable parameters and their structural complexity. Here we propose the novel Temporal Convolutions-based Hand Gesture Recognition architecture (TC-HGR) to reduce this computational burden. With this approach, we classified 17 hand gestures via surface Electromyogram (sEMG) signals by the adoption of attention mechanisms and temporal convolutions. The proposed method led to 81.65% and 80.72% classification accuracy for window sizes of 300ms and 200ms, respectively. The number of parameters to train the proposed TC-HGR architecture is 11.9 times less than that of its state-of-the-art counterpart.
翻译:生物信号处理和机器学习的进展,特别是深神经网络(DNN),为开发创新的人类-海洋界面以解码人类意图和控制人造肢体铺平了道路。DNN模型在解码肌肉电动活动的其他算法方面,特别是在确认手势方面,显示了有希望的结果。这些数据驱动模型由于需要大量可训练参数及其结构复杂性而面临挑战。我们在这里提议了基于Temal Convolution的手动手动识别结构(TC-HGR)来减少这一计算负担。我们采用这种方法,通过采用关注机制和时间变异,通过表面电图信号对17个手势进行了分类。拟议方法导致300米和200米窗户大小的分类精度分别达到81.65%和80.72%。用于培训拟议的TC-HGR结构的参数数量比其最先进的对口单位少11.9倍。