面向球面立体匹配的全向相机空间均匀细分

D. Kang, Hyeonjoong Jang, Jungeon Lee, C. Kyung, Min H. Kim
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引用次数: 0

摘要

为了更好地了解周围环境,全向相机得到了广泛的应用。它们通常被配置为立体来估计深度。然而,由于鱼眼镜头的光学特性,传统的极外几何结构不能直接应用于全向相机图像。全向图像的中间格式,如等角图像,已被使用。然而,由于近极点区域的图像失真严重,这些图像格式的立体匹配性能一直低于传统的立体匹配。为了解决全向图像的失真问题,提出了一种球面测地线网格细分方案。这样可以在全向相机空间中对球面图像信息进行更多的各向同性补丁采样。通过对现有等弧格式的扩展,采用等弧细分格式对球面测地线网格进行镶嵌,使网格单元的尺寸和间隔距离尽可能均匀,即球面网格单元边缘的弧长得到了很好的正则化。此外,我们在二维图像中的均匀镶嵌坐标可以通过一对一的映射转换成球坐标,允许分析的前/后转换。我们的均匀镶嵌方案比传统的基于圆柱形和立方体的方法实现了更高的立体匹配精度,将立体匹配所需的内存片段减少了20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uniform Subdivision of Omnidirectional Camera Space for Efficient Spherical Stereo Matching
Omnidirectional cameras have been used widely to better understand surrounding environments. They are often configured as stereo to estimate depth. However, due to the optics of the fish eye lens, conventional epipolar geometry is inapplicable directly to omnidirectional camera images. Intermediate formats of omnidirectional images, such as equirect-angular images, have been used. However, stereo matching performance on these image formats has been lower than the conventional stereo due to severe image distortion near pole regions. In this paper, to address the distortion problem of omnidirectional images, we devise a novel subdivision scheme of a spherical geodesic grid. This enables more isotropic patch sampling of spherical image information in the omnidirectional camera space. By extending the existing equalarc scheme, our spherical geodesic grid is tessellated with an equalepiline subdivision scheme, making the cell sizes and in-between distances as uniform as possible, i.e., the arc length of the spherical grid cell's edges is well regularized. Also, our uniformly tessellated coordinates in a 2D image can be transformed into spherical coordinates via one-to-one mapping, allowing for analytical forward/backward transformation. Our uniform tessellation scheme achieves a higher accuracy of stereo matching than the traditional cylindrical and cubemap-based approaches, reducing the memory footage required for stereo matching by 20%.
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