Lytro相机高质量光场图像重建标定管道建模

Donghyeon Cho, Minhaeng Lee, Sunyeong Kim, Yu-Wing Tai
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引用次数: 145

摘要

光场成像系统作为新一代相机的发展模式,近年来备受关注。光场成像系统由三部分组成:数据采集、操作和应用。给定一个采集系统,了解光场相机如何从原始图像转换到最终的重新聚焦图像是很重要的。在本文中,以Lytro相机为例,我们描述了一步一步校准原始光场图像的过程。我们特别感兴趣的是了解微透镜阵列的空间和角坐标以及图像重建的重采样过程。由于Lytro使用微透镜图像的六角形排列,因此需要额外的校准处理。校正后,我们分析和比较了几种重采样方法在有校正和无校正图像重建中的性能。最后,提出了一种基于学习的插值方法,该方法比以前的插值方法(包括Lytro软件中使用的方法)具有更高的图像重建质量。
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Modeling the Calibration Pipeline of the Lytro Camera for High Quality Light-Field Image Reconstruction
Light-field imaging systems have got much attention recently as the next generation camera model. A light-field imaging system consists of three parts: data acquisition, manipulation, and application. Given an acquisition system, it is important to understand how a light-field camera converts from its raw image to its resulting refocused image. In this paper, using the Lytro camera as an example, we describe step-by-step procedures to calibrate a raw light-field image. In particular, we are interested in knowing the spatial and angular coordinates of the micro lens array and the resampling process for image reconstruction. Since Lytro uses a hexagonal arrangement of a micro lens image, additional treatments in calibration are required. After calibration, we analyze and compare the performances of several resampling methods for image reconstruction with and without calibration. Finally, a learning based interpolation method is proposed which demonstrates a higher quality image reconstruction than previous interpolation methods including a method used in Lytro software.
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