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Human Activity Recognition Based on Deep Learning Method

机译:基于深度学习方法的人类活动识别

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With the increasing demand of security defense., anti-terrorism investigation and disaster rescue., human activity classification and recognition have become a hot research topic. When a human is illuminated by electromagnetic waves., a Doppler signal is generated from his or her moving parts. Indeed., bodily movements are what make humans micro-Doppler signatures unique., offering a chance to classify human activities. Classification needs a lot of samples for training., however., in the real application., there is a certain gap between the simulated data and the real data., and the measured data is often difficult to obtain. Due to the nonstationary characteristic for human radar echoes., the spectrograms for the human activities show different micro-Doppler signatures. Therefore., we proposed a method of human activity classification based on spectrograms using deep learning techniques., including deep convolutional generative adversarial network for expanding and enriching training set and a transfer-learned deep convolutional network (DCNN) for feature extraction and classification., which is based on a DCNN pre-trained by a large-scale RGB image data set-that is., ImageNet. Finally., the simulation results verified the effectiveness of the proposed method.
机译:随着安全防御的需求越来越多。,反恐调查和灾难救援。,人类活动分类和识别已成为一个热门的研究主题。当人用电磁波照射时,从他或她的运动部件产生多普勒信号。实际上。,身体运动是使人类微量多普勒签名独一无二的。,提供了分类人类活动的机会。分类需要许多样本进行培训。然而,在真实的应用中,模拟数据与实际数据之间存在一定的间隙。,并且测量的数据通常难以获得。由于人雷达回声的非营养特征。,人类活动的谱图显示了不同的微多普勒签名。因此,我们提出了一种基于使用深度学习技术的谱图的人类活动分类方法。,包括用于扩展和丰富训练集的深度卷积生成对抗网络,以及用于特征提取和分类的转移学习的深卷积网络(DCNN)。,这是基于由大规模RGB图像数据集预先训练的DCNN - 即。,Imagenet。最后。,仿真结果验证了该方法的有效性。

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