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Object classification on raw radar data using convolutional neural networks

机译:使用卷积神经网络对原始雷达数据的对象分类

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This paper evaluates the classification of objects given their signal data via a simple convolutional neural network (CNN). Many of the signal processing neural networks involve sound frequency data or Doppler signatures that contain the characteristic features of each object. In this study, we use frequency-intensity data within range-time domain from a Frequency-Modulated Continuous-Wave (FMCW) radar to classify detected objects. The application of various data augmentation methods mitigated the scarcity of labeled data from our field experiments. Time stretching, frequency shifting and noise addition preserved the semantic information of each rangetime data, further improving the models ability to generalize. Modifications applied to our data, which is then converted into a low-level log-scaled mel-spectrogram representation, are learned by CNN models with a set of convolutional and max-pooling layers along with fully-connected layers and selective residual module. Based on our experiments, we conclude that raw radar data can be used for training CNNs for classification and thus can be used to classify a car, a human, and an UAV.
机译:本文通过简单的卷积神经网络(CNN)评估给定信号数据的对象的分类。许多信号处理神经网络涉及包含每个对象的特征特征的声频数据或多普勒签名。在这项研究中,我们在频率调制的连续波(FMCW)雷达中使用范围时域内的频率强度数据以对检测到的对象进行分类。各种数据增强方法的应用减少了来自现场实验的标记数据的稀缺性。时间拉伸,频率移位和噪声添加保留了每个横向数据的语义信息,进一步提高了泛化的模型能力。应用于我们的数据的修改,然后将其转换为低电平对数刻度熔点表示,由CNN模型与一组卷积和最大池层一起学习,以及完全连接的层和选择性残余模块。基于我们的实验,我们得出结论,原始雷达数据可用于培训CNN进行分类,因此可用于对汽车,人类和无人机进行分类。

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