Parallax Tolerant Light Field Stitching for Hand-Held Plenoptic Cameras

Xin Jin;Pei Wang;Qionghai Dai
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引用次数: 3

Abstract

Light field (LF) stitching is a potential solution to improve the field of view (FOV) for hand-held plenoptic cameras. Existing LF stitching methods cannot provide accurate registration for scenes with large depth variation. In this paper, a novel LF stitching method is proposed to handle parallax in the LFs more flexibly and accurately. First, a depth layer map (DLM) is proposed to guarantee adequate feature points on each depth layer. For the regions of nondeterministic depth, superpixel layer map (SLM) is proposed based on LF spatial correlation analysis to refine the depth layer assignments. Then, DLM-SLM-based LF registration is proposed to derive the location dependent homography transforms accurately and to warp LFs to its corresponding position without parallax interference. 4D graph-cut is further applied to fuse the registration results for higher LF spatial continuity and angular continuity. Horizontal, vertical and multi-LF stitching are tested for different scenes, which demonstrates the superior performance provided by the proposed method in terms of subjective quality of the stitched LFs, epipolar plane image consistency in the stitched LF, and perspective-averaged correlation between the stitched LF and the input LFs.
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手持式全光纤摄像机视差容忍光场拼接
光场(LF)缝合是改善手持式全光摄像机视场(FOV)的一种潜在解决方案。现有的LF拼接方法不能为具有大深度变化的场景提供准确的配准。本文提出了一种新的LF拼接方法,以更灵活、准确地处理LF中的视差。首先,提出了一种深度层图(DLM)来保证每个深度层上有足够的特征点。对于深度不确定的区域,提出了基于LF空间相关分析的超像素层映射(SLM)来细化深度层分配。然后,提出了基于DLM SLM的LF配准,以精确地导出位置相关的单应性变换,并在没有视差干扰的情况下将LF扭曲到其对应位置。4D图切割被进一步应用于融合配准结果以获得更高的LF空间连续性和角度连续性。针对不同的场景测试了水平、垂直和多LF缝合,这证明了所提出的方法在缝合LF的主观质量、缝合LF中的核平面图像一致性以及缝合LF和输入LF之间的透视平均相关性方面提供的优越性能。
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