论文标题
具有任意照明和检测模式的非视线成像
Non-line-of-sight imaging with arbitrary illumination and detection pattern
论文作者
论文摘要
非视线(NLOS)成像旨在重建视力线掩盖的目标。现有的NLOS成像算法需要在接力表面的大面积区域的矩形网格点上进行密集的测量,这严重阻碍了它们在机器人视觉,自动驾驶,救援操作和遥感等实用应用中的可变继电器场景中的可用性。在这项工作中,我们提出了一个用于NLOS成像的贝叶斯框架,没有对照明和检测点的空间模式的具体要求。通过引入虚拟共聚焦信号,我们为高质量重建设计了一种共同互补的信号对象协作正则化(CC-SOCR)算法。我们的方法能够在最通用的继电器设置下重建隐藏物体的反照率和表面正常。此外,使用常规的继电器表面,粗糙而不是密集的测量足以使我们的方法可以显着减少采集时间。正如多个实验中所证明的那样,新框架大大提高了NLOS成像的适用性。
Non-line-of-sight (NLOS) imaging aims at reconstructing targets obscured from the direct line of sight. Existing NLOS imaging algorithms require dense measurements at rectangular grid points in a large area of the relay surface, which severely hinders their availability to variable relay scenarios in practical applications such as robotic vision, autonomous driving, rescue operations and remote sensing. In this work, we propose a Bayesian framework for NLOS imaging with no specific requirements on the spatial pattern of illumination and detection points. By introducing virtual confocal signals, we design a confocal complemented signal-object collaborative regularization (CC-SOCR) algorithm for high quality reconstructions. Our approach is capable of reconstructing both albedo and surface normal of the hidden objects with fine details under the most general relay setting. Moreover, with a regular relay surface, coarse rather than dense measurements are enough for our approach such that the acquisition time can be reduced significantly. As demonstrated in multiple experiments, the new framework substantially enhances the applicability of NLOS imaging.