Recent research has shown that mmWave radar sensing is effective for object detection in low visibility environments, which makes it an ideal technique in autonomous navigation systems such as autonomous vehicles. However, due to the characteristics of radar signals such as sparsity, low resolution, specularity, and high noise, it is still quite challenging to reconstruct 3D object shapes via mmWave radar sensing. Built on our recent proposed 3DRIMR (3D Reconstruction and Imaging via mmWave Radar), we introduce in this paper DeepPoint, a deep learning model that generates 3D objects in point cloud format that significantly outperforms the original 3DRIMR design. The model adopts a conditional Generative Adversarial Network (GAN) based deep neural network architecture. It takes as input the 2D depth images of an object generated by 3DRIMR's Stage 1, and outputs smooth and dense 3D point clouds of the object. The model consists of a novel generator network that utilizes a sequence of DeepPoint blocks or layers to extract essential features of the union of multiple rough and sparse input point clouds of an object when observed from various viewpoints, given that those input point clouds may contain many incorrect points due to the imperfect generation process of 3DRIMR's Stage 1. The design of DeepPoint adopts a deep structure to capture the global features of input point clouds, and it relies on an optimally chosen number of DeepPoint blocks and skip connections to achieve performance improvement over the original 3DRIMR design. Our experiments have demonstrated that this model significantly outperforms the original 3DRIMR and other standard techniques in reconstructing 3D objects.
翻译:最近的研究表明, mm Wave雷达遥感对于低可见度环境中的物体探测有效, 这使它成为自主导航系统( 如自主飞行器)中最理想的3D对象技术。 但是, 由于雷达信号的特性, 如宽度、 低分辨率、 光度、 高噪音等, 仍然很难通过 mmWave 雷达遥感重建 3D 对象形状 。 以我们最近提议的 3DRIMR (3D重建和通过 mmWave Radar) 3D 点云层图像为基础, 我们在本文中引入了一种以点云格式生成的3D字形天体, 大大优于最初的 3DRMR 设计。 该模型采用了一个原始的3D字形模型, 以点云层为3DRM 原样生成的三维星系组合, 在从不同角度观测到的深深深深层神经网络结构中, 将3DRMR 的2D 深度图像作为输入点输入点输入深度。 模型由一个新的发电机网络组成, 3DRDRD 3 的多个原始粗度和低点显示 3DRDRDRD 。 在不同的深度结构中, 的模型中, 的模型中, 将显示的模型的模型的模型的模型的模型将显示的很多 。