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Efficient human activity classification via sparsity-driven transfer learning

机译:通过稀疏驱动的转移学习进行有效的人类活动分类

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The deployment of deep neural networks in real-world radar-based human activity classification is largely hindered by both the high computational cost and the large amount of training samples. In this study, the authors propose a method to simultaneously reduce the computational burden and the number of labelled training samples. Different from previous transfer learning methods that simply prune fully-connected layers and modify the weights of the convolutional layers, they enforce filter-level sparsity in the transfer learning from ImageNet to the micro-Doppler measurements. Through the sparsity-driven transfer learning, unimportant convolutional filters can be identified and then be pruned. Therefore, a light but effective transfer learned net can be obtained. The experiments demonstrate the sparsity-driven transfer learned VGG-19 Net not only outperforms convolutional neural networks trained from scratch by nearly 10% accuracy but also gives an 11 x reduction in the number of parameters and a 10 x reduction in computing operations compared with the original VGG-19 Net.
机译:在现实世界中基于雷达的人类活动分类中,深度神经网络的部署在很大程度上受到高计算成本和大量训练样本的阻碍。在这项研究中,作者提出了一种同时减少计算负担和标记训练样本数量的方法。与以前的传输学习方法不同,它们只是简单地修剪全连接层并修改卷积层的权重,而在从ImageNet到微多普勒测量的传输学习中,它们会强制执行滤波器级的稀疏性。通过稀疏驱动的转移学习,可以识别不重要的卷积滤波器,然后对其进行修剪。因此,可以获得轻而有效的转移学习网。实验表明,稀疏驱动的转移学习VGG-19 Net不仅比从头开始训练的卷积神经网络表现出近10%的精度,而且参数数量减少了11倍,计算操作减少了10倍。原始的VGG-19网。

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