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Classification of human activity on water through micro-Dopplers using deep convolutional neural networks

机译:使用深卷积神经网络通过微多普勒通过微量多普勒进行分类

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Detecting humans and classifying their activities on the water has significant applications for surveillance, border patrols, and rescue operations. When humans are illuminated by radar signal, they produce micro-Doppler signatures due to moving limbs. There has been a number of research into recognizing humans on land by their unique micro-Doppler signatures, but there is scant research into detecting humans on water, hi this study, we investigate the micro-Doppler signatures of humans on water, including a swimming person, a swimming person pulling a floating object, and a rowing person in a small boat. The measured swimming styles were free stroke, backstroke, and breaststroke. Each activity was observed to have a unique micro-Doppler signature. Human activities were classified based on their micro-Doppler signatures. For the classification, we propose to apply deep convolutional neural networks (DCNN), a powerful deep learning technique. Rather than using conventional supervised learning that relies on handcrafted features, we present an alternative deep learning approach. We apply the DCNN, one of the most successful deep learning algorithms for image recognition, directly to a raw micro-Doppler spectrogram of humans on the water. Without extracting any explicit features from the micro-Dopplers, the DCNN can learn the necessary features and build classification boundaries using the training data. We show that the DCNN can achieve accuracy of more than 87.8% for activity classification using 5-fold cross validation.
机译:检测人类和对水的活动进行分类,对监视,边境巡逻和救援行动有重大应用。当人类被雷达信号照射时,它们由于移动肢体而产生微多普勒签名。通过独特的微多普勒签名识别人类对土地的识别,但在探测水域中有很少的研究,致力于这项研究,我们研究了人类对水的微多普勒签名,包括游泳人,拉动浮动物体的游泳人员,以及一艘小船的划船人。测量的游泳款式是自由中风,仰泳和蛙泳。观察到每项活动具有独特的微多普勒签名。基于其微多普勒签名分类人类活动。对于分类,我们建议应用深度卷积神经网络(DCNN),这是一种强大的深度学习技术。我们不是使用依赖于手工制作功能的传统监督学习,而不是使用替代的深度学习方法。我们将DCNN应用于图像识别的最成功的深度学习算法之一,直接到水面上的人类的原始微多普勒谱图。如果没有从微多普勒默提取任何显式特征,DCNN可以使用训练数据来学习必要的功能并构建分类边界。我们表明,使用5倍交叉验证,DCNN可以实现87.8%的精度超过87.8%。

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