mmWave radar has been shown as an effective sensing technique in low visibility, smoke, dusty, and dense fog environment. However tapping the potential of radar sensing to reconstruct 3D object shapes remains a great challenge, due to the characteristics of radar data such as sparsity, low resolution, specularity, high noise, and multi-path induced shadow reflections and artifacts. In this paper we propose 3D Reconstruction and Imaging via mmWave Radar (3DRIMR), a deep learning based architecture that reconstructs 3D shape of an object in dense detailed point cloud format, based on sparse raw mmWave radar intensity data. The architecture consists of two back-to-back conditional GAN deep neural networks: the first generator network generates 2D depth images based on raw radar intensity data, and the second generator network outputs 3D point clouds based on the results of the first generator. The architecture exploits both convolutional neural network's convolutional operation (that extracts local structure neighborhood information) and the efficiency and detailed geometry capture capability of point clouds (other than costly voxelization of 3D space or distance fields). Our experiments have demonstrated 3DRIMR's effectiveness in reconstructing 3D objects, and its performance improvement over standard techniques.
翻译:在低可见度、烟雾、灰尘和浓密雾环境中,Wife雷达被显示为一种有效的遥感技术。然而,利用雷达遥感潜力重建3D天体形状仍然是一项巨大的挑战,因为雷达数据的特性,如宽度、低分辨率、光度、高噪声和多路引导的影子反射和人工制品等雷达数据。在本文中,我们提议3D重建和通过毫米Wave雷达(3DRIMR)成像,这是一个深层次的学习基础架构,根据稀有的原始毫米Wave雷达强度数据,以密集、详细点云格式重建一个物体的3D形状。该架构由两个条件的后对后GAN深神经网络组成:第一个发电机网络根据原始雷达强度数据生成2D深度图像,第二个发电机网络输出基于第一台发电机结果的3D点云。该架构利用了革命神经网络的革命性运行(提取当地结构周边信息)以及点云的效率和详细的几何测量能力(而不是3D-D-D-空间或距离域的昂贵的氧化物体),我们的实验展示了3D-DR的绩效。