A Novel Depth Recovery Approach from Multi-View Stereo Based Focusing

Zhaolin Xiao, Heng Yang, Qing Wang, Guoqing Zhou
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引用次数: 1

Abstract

In this paper, we propose a novel depth recovery method from multi-view stereo based focusing. Inspired by the 4D light field theory, we discover the relationship between classical multi-view stereo (MVS) and depth from focus (DFF) methods and concern about different frequency distribution in 2D light field space. Then we propose a way to separate the depth recovery into two steps. At the first stage, we choose some depth candidates using existing multi-view stereo method. At the second phase, the depth from focusing algorithm is employed to determine the final depth. As well known, multi-view stereo and depth from focus need different kinds of input images, which can not be acquired at the same time by using traditional imaging system. We have addressed this issue by using a camera array system and synthetic aperture photography. Both multi-view images and distinct defocus blur images can be captured at the same time. Experimental results have shown that our proposed method can take advantages of MVS and DFF and the recovered depth is better than traditional methods.
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一种基于多视点立体聚焦的深度恢复新方法
本文提出了一种基于多视点立体聚焦的深度恢复方法。受四维光场理论的启发,我们发现了经典的多视点立体(MVS)与聚焦深度(DFF)方法之间的关系,并关注了二维光场空间中不同频率的分布。然后,我们提出了一种将深度恢复分为两个步骤的方法。首先,利用现有的多视点立体方法选取深度候选点;第二阶段,采用聚焦深度算法确定最终深度。众所周知,多视角立体和焦点深度需要不同类型的输入图像,而传统成像系统无法同时获取这些图像。我们通过使用相机阵列系统和合成光圈摄影解决了这个问题。可以同时捕获多视图图像和明显的散焦模糊图像。实验结果表明,该方法可以充分利用MVS和DFF的优点,且恢复深度优于传统方法。
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