Liu Yuxuan, Mo Fan, Aleksandrov Mitko, Zlatanova Sisi, Tao Pengjie
Opt Express. 2021 Jan 4;29(1):158-169. doi: 10.1364/OE.405168.
Light field cameras capture spatial and angular information simultaneously. A scene point in the 3D space appears many times on the raw image, bringing challenges to light field camera calibration. This paper proposes a novel calibration method for standard plenoptic cameras by using corner features from raw images. We select appropriate micro-lens images on raw images and detect corner features on them. During calibration, we first build the relationship of corner features and points in object space by using a few intrinsic parameters and then perform a linear calculation of these parameters, which are further refined via a non-linear optimization. Experiments on Lytro and Lytro Illum cameras demonstrate that the accuracy and efficiency of the proposed method are superior to the state-of-the-art methods based on features of raw images.
光场相机可同时捕捉空间和角度信息。三维空间中的一个场景点在原始图像上会多次出现,这给光场相机校准带来了挑战。本文提出了一种通过利用原始图像中的角点特征对标准全光相机进行校准的新方法。我们在原始图像上选择合适的微透镜图像并检测其上的角点特征。在校准过程中,我们首先利用一些内参建立角点特征与物体空间中点的关系,然后对这些参数进行线性计算,并通过非线性优化进一步细化。在Lytro和Lytro Illum相机上的实验表明,该方法的精度和效率优于基于原始图像特征的现有方法。