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基于深度的重新聚焦以减少方向混叠伪影。

Depth-based refocusing for reducing directional aliasing artifacts.

作者信息

Lee Ensun, Yang Seohee, Han Miseon, Kim Jeongtae

出版信息

Opt Express. 2016 Nov 28;24(24):28065-28079. doi: 10.1364/OE.24.028065.

Abstract

We investigate a depth-based refocusing method using four-dimensional (4D) light field data, which can reduce directional aliasing artifacts in a refocused image. Unlike conventional filtering-based methods, the proposed method estimates the amount of aliasing artifacts using the disparity information between two neighboring views. It then applies an exact smoothing operation to the refocused image in order to remove the aliasing artifacts. By doing that, the proposed method is able to generate a smoothly blurred image in the out-of-focus region and a sharp image in the focused region. In addition, as the proposed method performs a smoothing operation on the refocused image, it does not create virtual views, which often requires an extremely large amount of computational resources. In both simulation and experiment, the proposed method shows outstanding performance compared to conventional methods.

摘要

我们研究了一种使用四维(4D)光场数据的基于深度的重新聚焦方法,该方法可以减少重新聚焦图像中的方向混叠伪像。与传统的基于滤波的方法不同,该方法利用两个相邻视图之间的视差信息来估计混叠伪像的数量。然后,它对重新聚焦的图像应用精确的平滑操作以去除混叠伪像。通过这样做,该方法能够在失焦区域生成平滑模糊的图像,在聚焦区域生成清晰的图像。此外,由于该方法对重新聚焦的图像执行平滑操作,因此不会创建通常需要大量计算资源的虚拟视图。在模拟和实验中,与传统方法相比,该方法都表现出出色的性能。

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