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All-ConvNet: A Lightweight All CNN for Neuromuscular Activity Recognition Using Instantaneous High-Density Surface EMG Images

机译:All-ConvNet:使用瞬时高密度表面肌电图图像进行神经肌肉活动识别的轻质全CNN

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Neuromuscular activity recognition using low- resolution instantaneous high-density surface electromyography (HD-sEMG) images present a great challenge. The recent result shows the high potentiality and hence opens up new avenues for the development of more fluid and natural muscle-computer interfaces. However, the existing approaches employed a very large deep ConvNet, which requires learning >5.63 million training parameters only during fine-tuning and pre-trained on a very large-scale labeled HD-sEMG training datasets, as a result, it makes high-end resource bounded and computationally expensive. To overcome this problem, we propose a lightweight All-ConvNet model that consists solely of convolutional layers, a simple yet efficient framework for learning instantaneous HD-sEMG images from scratch through random initialization. Without using any pre-trained models, our proposed lightweight All-ConvNet demonstrate very competitive or even state of the art performance on a current benchmarks HD-sEMG dataset, while requires learning only ~460k training parameters and using ~12xsmaller dataset. The experimental results proved that the proposed lightweight All-ConvNet is highly effective for learning discriminative features for low-resolution instantaneous HD-sEMG image recognition and low-latency processing especially in the data and high-end resource constrained scenarios.
机译:使用低分辨率瞬时高密度表面肌电图(HD-sEMG)图像进行神经肌肉活动识别提出了巨大挑战。最近的结果显示出很高的潜力,因此为开发更多的流体和自然的肌肉计算机界面开辟了新的途径。但是,现有的方法采用了非常大的深层ConvNet,仅在微调期间就需要学习563万多个训练参数,并且需要在非常大规模的标记HD-sEMG训练数据集上进行预训练,因此,最终资源有限且计算量大。为了克服这个问题,我们提出了一个轻量级的All-ConvNet模型,该模型仅由卷积层组成,这是一个简单而有效的框架,用于从头开始通过随机初始化学习瞬时HD-sEMG图像。在不使用任何预训练模型的情况下,我们提出的轻量级All-ConvNet在当前基准HD-sEMG数据集上展示了非常具有竞争力甚至最先进的性能,而仅需学习约460k训练参数并使用约12倍的较小数据集。实验结果证明,所提出的轻量级All-ConvNet对于学习低分辨率瞬时HD-sEMG图像识别和低延迟处理的判别特征非常有效,特别是在数据和高端资源受限的情况下。

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