Disparity Estimation for Focused Light Field Camera Using Cost Aggregation in Micro-Images

Zhi-Ping Ding, Qian Liu, Qing Wang
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Abstract

Unlike conventional light field camera that records spatial and angular information explicitly, the focused light field camera implicitly collects angular samplings in microimages behind the micro-lens array. Without directly decoded sub-apertures, it is difficult to estimate disparity for focused light field camera. On the other hand, disparity estimation is a critical step for sub-aperture rendering from raw image. It is hence a typical "chicken-and-egg" problem. In this paper we propose a two-stage method for disparity estimation from the raw image. Compared with previous approaches which treat all pixels in a micro-image as a same disparity label, a segmentation-tree based cost aggregation is introduced to provide a more robust disparity estimation for each pixel, which optimizes the disparity of low-texture areas and yields sharper occlusion boundaries. After sub-apertures are rendered from the raw image using initial estimation, the optimal one is globally regularized using the reference sub-aperture image. Experimental results on real scene datasets have demonstrated advantages of our method over previous work, especially in low-texture areas and occlusion boundaries.
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基于代价聚合的聚焦光场相机微图像视差估计
与传统光场相机明确记录空间和角度信息不同,聚焦光场相机隐式地在微透镜阵列后面的微图像中收集角度采样。对于聚焦光场相机来说,如果没有直接解码的子孔径,很难估计视差。另一方面,视差估计是从原始图像绘制子孔径的关键步骤。因此这是一个典型的“先有鸡还是先有蛋”的问题。本文提出了一种两阶段的原始图像视差估计方法。与以往将微图像中的所有像素视为相同视差标签的方法相比,该方法引入了基于分割树的代价聚合,为每个像素提供了更鲁棒的视差估计,从而优化了低纹理区域的视差,产生了更清晰的遮挡边界。对原始图像进行初始估计后,利用参考子孔径图像进行全局正则化,得到最优子孔径图像。在真实场景数据集上的实验结果证明了我们的方法优于以往的工作,特别是在低纹理区域和遮挡边界。
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