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Classification of Human Activity Based on Radar Signal Using 1-D Convolutional Neural Network

机译:使用1-D卷积神经网络的基于雷达信号的人类活动分类

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Previously, the 2-D convolutional neural networks (2-D-CNNs) have been introduced to classify the human activity based on micro-Doppler radar. Whereas these methods can achieve high accuracy, their application is limited by their high computational complexity. In this letter, an end-to-end 1-D convolutional neural network (1-D-CNN) is first proposed for radar-based sensors for human activity classification. In the proposed 1-D-CNN, the inception densely block (ID-Block) tailored for the 1-D-CNN is proposed. The ID-Block incorporated the three techniques: inception module, dense network, and network-in-network techniques. With these techniques, the proposed network not only achieve a high classification accuracy but also keep the computational complexity at a low level. The experiments results show that the classification accuracy of the proposed method is 96.1% for human activity classification that is higher than that of existing state-of-art 2-D-CNN methods while the computational speed of forward propagation is increased by about (2.71x to 29.68x) of the existing 2-D-CNN methods.
机译:以前,已经引入了2-D卷积神经网络(2-D-CNN)以基于微多普勒雷达对人类活动进行分类。虽然这些方法可以实现高精度,但它们的应用受到它们的高计算复杂性的限制。在这封信中,首先提出用于基于雷达的传感器的端到端1-D卷积神经网络(1-D-CNN),用于人类活动分类。在所提出的1-D-CNN中,提出了针对1-D-CNN定制的成立块(ID-块)。 ID-Block包含三种技术:成立模块,密集网络和网络网络网络技术。利用这些技术,所提出的网络不仅达到了高分类精度,而且还将计算复杂性保持在较低水平。实验结果表明,人类活动分类的拟议方法的分类精度为96.1%,高于现有最先进的2-D-CNN方法,而前向传播的计算速度增加约(2.71 X至29.68x)现有的2-D-CNN方法。

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