Depth estimation for hand-held light field cameras under low light conditions

Min-Hung Chen, Ching-Fan Chiang, Yi-Chang Lu
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Abstract

Depth estimation is one of the new functions provided by hand-held light field cameras. However, the quality of depth estimation is very sensitive to noise, which is especially a problem for scenes under low light conditions. In this paper, we propose a depth estimation flow for light field data, which can be fully-automated and no noise characteristics are required a priori. The results of Root Mean Square Error (RMSE) and Percentage of Bad Matching Pixels (PBM) show the effectiveness of this iterative correlation-based depth estimation flow even with basic filtering functions.
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低光条件下手持式光场相机的深度估计
深度估计是手持光场相机提供的新功能之一。然而,深度估计的质量对噪声非常敏感,这对于低光照条件下的场景来说尤其是个问题。本文提出了一种光场数据深度估计流程,该流程可以完全自动化,并且不需要先验的噪声特征。均方根误差(RMSE)和不良匹配像素百分比(PBM)的结果表明,即使使用基本滤波函数,这种基于迭代相关的深度估计流程也是有效的。
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