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Object Detection and 3d Estimation Via an FMCW Radar Using a Fully Convolutional Network

机译:使用全卷积网络通过FMCW雷达进行目标检测和3d估计

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This paper considers object detection and 3D estimation using an FMCW radar. The state-of-the-art deep learning framework is employed instead of using traditional signal processing. In preparing the radar training data, the ground truth of an object orientation in 3D space is provided by conducting image analysis, of which the images are obtained through a coupled camera to the radar device. To ensure successful training of a fully convolutional network (FCN), we propose a normalization method, which is found to be essential to be applied to the radar signal before feeding into the neural network. The system after proper training is able to first detect the presence of an object in an environment. If it does, the system then further produces an estimation of its 3D position. Experimental results show that the proposed system can be successfully trained and employed for detecting a car and further estimating its 3D position in a noisy environment.
机译:本文考虑使用FMCW雷达进行目标检测和3D估计。采用了最新的深度学习框架,而不是使用传统的信号处理。在准备雷达训练数据时,通过进行图像分析来提供3D空间中物体方向的地面真相,其中图像是通过与摄像机相连的摄像机获得的。为了确保成功训练全卷积网络(FCN),我们提出了一种归一化方法,该方法被发现对于在馈入神经网络之前应用于雷达信号必不可少。经过适当培训的系统能够首先检测环境中物体的存在。如果是这样,则系统会进一步生成其3D位置的估计值。实验结果表明,所提出的系统可以成功地训练和用于检测汽车,并进一步估计在嘈杂环境中的3D位置。

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