Layer Depth Denoising and Completion for Structured-Light RGB-D Cameras

Ju Shen, S. Cheung
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引用次数: 139

Abstract

The recent popularity of structured-light depth sensors has enabled many new applications from gesture-based user interface to 3D reconstructions. The quality of the depth measurements of these systems, however, is far from perfect. Some depth values can have significant errors, while others can be missing altogether. The uncertainty in depth measurements among these sensors can significantly degrade the performance of any subsequent vision processing. In this paper, we propose a novel probabilistic model to capture various types of uncertainties in the depth measurement process among structured-light systems. The key to our model is the use of depth layers to account for the differences between foreground objects and background scene, the missing depth value phenomenon, and the correlation between color and depth channels. The depth layer labeling is solved as a maximum a-posteriori estimation problem, and a Markov Random Field attuned to the uncertainty in measurements is used to spatially smooth the labeling process. Using the depth-layer labels, we propose a depth correction and completion algorithm that outperforms other techniques in the literature.
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结构光RGB-D相机的层深度去噪和补全
最近,结构光深度传感器的流行使得许多新的应用成为可能,从基于手势的用户界面到3D重建。然而,这些系统的深度测量质量远非完美。一些深度值可能有明显的错误,而另一些则可能完全丢失。这些传感器之间深度测量的不确定性会显著降低后续视觉处理的性能。在本文中,我们提出了一种新的概率模型来捕捉结构光系统深度测量过程中的各种不确定性。我们模型的关键是使用深度层来解释前景对象和背景场景之间的差异,缺失深度值现象,以及颜色和深度通道之间的相关性。将深度层标注作为最大后验估计问题来解决,并使用与测量不确定性相适应的马尔可夫随机场在空间上平滑标注过程。利用深度层标签,我们提出了一种优于文献中其他技术的深度校正和补全算法。
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