Dense Depth and Color Acquisition of Repetitive Motions

Yi Xu, Daniel G. Aliaga
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引用次数: 5

Abstract

Modeling dynamic scenes is a challenging problem faced by applications such as digital content generation and motion analysis. Fast single-frame methods obtain sparse depth samples while multiple- frame methods often reply on the rigidity of the object to correspond a small number of consecutive shots for decoding the pattern by feature tracking. We present a novel structured-light acquisition method which can obtain dense depth and color samples for moving and deformable surfaces undergoing repetitive motions. Our key observation is that for repetitive motion, different views of the same motion state under different structured-light patterns can be corresponded together by image matching. These images densely encode an effectively "static" scene with time-multiplexed patterns that we can use for reconstruction of the time- varying scene. At the same time, color samples are reconstructed by matching images illuminated using white light to those using structured-light patterns. We demonstrate our approach using several real-world scenes.
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重复动作的密集深度和颜色获取
动态场景建模是数字内容生成和运动分析等应用所面临的一个具有挑战性的问题。快速的单帧方法获得稀疏的深度样本,而多帧方法往往根据目标的刚性来对应少量的连续镜头,通过特征跟踪来解码模式。提出了一种新的结构光采集方法,该方法可以获得重复运动的运动和变形表面的密集深度和颜色样本。我们的关键观察是,对于重复运动,不同结构光模式下相同运动状态的不同视图可以通过图像匹配对应在一起。这些图像密集编码一个有效的“静态”场景与时间复用模式,我们可以用来重建时变的场景。同时,将白光照射的图像与结构光模式的图像进行匹配,重建颜色样本。我们使用几个真实场景来演示我们的方法。
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