Department of Electrical Engineering, Stanford University, Stanford, California 94305 USA.
Nature. 2018 Mar 15;555(7696):338-341. doi: 10.1038/nature25489. Epub 2018 Mar 5.
How to image objects that are hidden from a camera's view is a problem of fundamental importance to many fields of research, with applications in robotic vision, defence, remote sensing, medical imaging and autonomous vehicles. Non-line-of-sight (NLOS) imaging at macroscopic scales has been demonstrated by scanning a visible surface with a pulsed laser and a time-resolved detector. Whereas light detection and ranging (LIDAR) systems use such measurements to recover the shape of visible objects from direct reflections, NLOS imaging reconstructs the shape and albedo of hidden objects from multiply scattered light. Despite recent advances, NLOS imaging has remained impractical owing to the prohibitive memory and processing requirements of existing reconstruction algorithms, and the extremely weak signal of multiply scattered light. Here we show that a confocal scanning procedure can address these challenges by facilitating the derivation of the light-cone transform to solve the NLOS reconstruction problem. This method requires much smaller computational and memory resources than previous reconstruction methods do and images hidden objects at unprecedented resolution. Confocal scanning also provides a sizeable increase in signal and range when imaging retroreflective objects. We quantify the resolution bounds of NLOS imaging, demonstrate its potential for real-time tracking and derive efficient algorithms that incorporate image priors and a physically accurate noise model. Additionally, we describe successful outdoor experiments of NLOS imaging under indirect sunlight.
如何对隐藏在相机视场之外的物体进行成像,是许多研究领域的一个基本问题,其应用包括机器人视觉、国防、遥感、医学成像和自动驾驶车辆等。已经通过用脉冲激光器和时间分辨探测器扫描可见表面来演示宏观尺度的非视线 (NLOS) 成像。而光探测和测距 (LIDAR) 系统则利用这些测量值从直接反射中恢复可见物体的形状,NLOS 成像则从多次散射光中重建隐藏物体的形状和反照率。尽管最近取得了进展,但由于现有重建算法的存储和处理要求过高,以及多次散射光的信号极其微弱,NLOS 成像仍然不切实际。在这里,我们表明共焦扫描程序可以通过促进光锥变换的推导来解决 NLOS 重建问题,从而解决这些挑战。与以前的重建方法相比,这种方法需要的计算和存储资源要少得多,并且可以以前所未有的分辨率对隐藏物体进行成像。共焦扫描还为反射物体的成像提供了显著增加的信号和范围。我们量化了 NLOS 成像的分辨率边界,展示了其在实时跟踪方面的潜力,并得出了包含图像先验和物理准确噪声模型的有效算法。此外,我们还描述了在间接阳光条件下 NLOS 成像的室外成功实验。