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Radar-Based Human Gait Recognition Using Dual-Channel Deep Convolutional Neural Network

机译:基于双通道深度卷积神经网络的基于雷达的步态识别

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This paper addresses the problem of radar-based human gait recognition based on the dual-channel deep convolutional neural network (DC-DCNN). To enrich the limited radar data set of human gaits and provide a benchmark for classifier training, evaluation, and comparison, it proposes an effective method for radar echo generation from the infrared, publicly accessible motion capture (MOCAP) data set. According to the different nonstationary characteristics of micro-Doppler (m-D) for the torso and limbs, it enhances their distinguishable joint timefrequency (JTF) features by applying the short-time Fourier transforms (SFTFs) with varying sliding window length and then designs the DC-DCNN structure to achieve refined human gait recognition by separate feature extraction and fusion. Experiments have shown that compared with the traditional single-channel deep convolutional neural network (SC-DCNN), the proposed method achieves higher recognition accuracy in refined human gait classification without incurring additional radar resources and could be readily extended to refined recognition of other human activities.
机译:本文解决了基于双通道深度卷积神经网络(DC-DCNN)的基于雷达的人体步态识别问题。为了丰富人类步态的有限雷达数据集,并为分类器的训练,评估和比较提供基准,它提出了一种有效的方法,可以从红外,公众可访问的运动捕获(MOCAP)数据集生成雷达回波。根据微多普勒(mD)对于躯干和四肢的不同非平稳特性,通过应用具有可变滑动窗口长度的短时傅立叶变换(SFTF)来增强其可区分的联合时频(JTF)特征,然后设计DC -DCNN结构,通过单独的特征提取和融合来实现精细的步态识别。实验表明,与传统的单通道深度卷积神经网络(SC-DCNN)相比,该方法在精确的步态分类中实现了更高的识别精度,而不会产生额外的雷达资源,并且可以很容易地扩展到其他人类活动的精确识别中。

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