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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >DNN Transfer Learning From Diversified Micro-Doppler for Motion Classification
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DNN Transfer Learning From Diversified Micro-Doppler for Motion Classification

机译:DNN从多元化的微多普勒运动学习中进行运动分类

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摘要

Recently, deep neural networks (DNNs) have been the subject of intense research for the classification of radio frequency signals, such as synthetic aperture radar imagery or micro-Doppler signatures. However, a fundamental challenge is the typically small amount of data available due to the high costs and resources required for measurements. Small datasets limit the depth of DNNs implementable, and limit performance. In this work, a novel method for generating diversified radar micro-Doppler signatures using Kinect-based motion capture simulations is proposed as a training database for transfer learning with DNNs. In particular, it is shown that together with residual learning, the proposed DivNet approach allows for the construction of DNNs and offers improved performance in comparison to transfer learning from optical imagery. Furthermore, it is shown that initializing the network using diversified synthetic micro-Doppler signatures enables not only robust performance for previously unseen target profiles, but also class generalization. Results are presented for 7-class and 11-class human activity recognition scenarios using a 4-GHz continuous wave software-defined radar.
机译:近年来,深度神经网络(DNN)一直是射频信号分类(例如合成孔径雷达图像或微多普勒信号)的研究重点。然而,一个根本的挑战是由于测量所需的高成本和资源,通常可用的数据量通常很少。小型数据集限制了可实施的DNN的深度,并限制了性能。在这项工作中,提出了一种新的方法,该方法使用基于Kinect的运动捕获模拟生成多样化的雷达微多普勒信号,作为用于DNN转移学习的训练数据库。特别是,它表明与残差学习一起,提出的DivNet方法允许DNN的构造,并且与从光学图像转移学习相比,提供了改进的性能。此外,已经表明,使用多样化的合成微多普勒签名初始化网络不仅可以使以前看不见的目标配置文件具有强大的性能,而且还可以进行类归纳。给出了使用4 GHz连续波软件定义的雷达对7类和11类人类活动识别场景的结果。

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