Depth Estimation Using Structured Light Flow — Analysis of Projected Pattern Flow on an Object’s Surface

Furukawa Ryo, R. Sagawa, Hiroshi Kawasaki
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引用次数: 28

Abstract

Shape reconstruction techniques using structured light have been widely researched and developed due to their robustness, high precision, and density. Because the techniques are based on decoding a pattern to find correspondences, it implicitly requires that the projected patterns be clearly captured by an image sensor, i.e., to avoid defocus and motion blur of the projected pattern. Although intensive researches have been conducted for solving defocus blur, few researches for motion blur and only solution is to capture with extremely fast shutter speed. In this paper, unlike the previous approaches, we actively utilize motion blur, which we refer to as a light flow, to estimate depth. Analysis reveals that minimum two light flows, which are retrieved from two projected patterns on the object, are required for depth estimation. To retrieve two light flows at the same time, two sets of parallel line patterns are illuminated from two video projectors and the size of motion blur of each line is precisely measured. By analyzing the light flows, i.e. lengths of the blurs, scene depth information is estimated. In the experiments, 3D shapes of fast moving objects, which are inevitably captured with motion blur, are successfully reconstructed by our technique.
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使用结构光流进行深度估计-分析物体表面上的投影模式流
基于结构光的形状重建技术以其鲁棒性、高精度和高密度得到了广泛的研究和发展。由于该技术是基于解码模式来找到对应关系,因此它隐含地要求投影模式被图像传感器清楚地捕获,即避免投影模式的散焦和运动模糊。虽然对于散焦模糊的解决已经进行了大量的研究,但是对于运动模糊的研究却很少,唯一的解决方法就是用极快的快门速度进行捕捉。在本文中,与之前的方法不同,我们积极地利用运动模糊,我们称之为光流,来估计深度。分析表明,深度估计需要从物体上的两个投影模式中检索到的最小两个光流。为了同时检索两个光流,从两个视频投影仪照射两组平行线模式,并精确测量每条线的运动模糊大小。通过分析光流,即模糊的长度,估计场景深度信息。在实验中,我们的技术成功地重建了快速运动物体的三维形状,这些物体不可避免地会被运动模糊捕获。
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