Omnidirectional 360{\deg} images have found many promising and exciting applications in computer vision, robotics and other fields, thanks to their increasing affordability, portability and their 360{\deg} field of view. The most common format for storing, processing and visualising 360{\deg} images is equirectangular projection (ERP). However, the distortion introduced by the nonlinear mapping from 360{\deg} image to ERP image is still a barrier that holds back ERP images from being used as easily as conventional perspective images. This is especially relevant when estimating 360{\deg} optical flow, as the distortions need to be mitigated appropriately. In this paper, we propose a 360{\deg} optical flow method based on tangent images. Our method leverages gnomonic projection to locally convert ERP images to perspective images, and uniformly samples the ERP image by projection to a cubemap and regular icosahedron vertices, to incrementally refine the estimated 360{\deg} flow fields even in the presence of large rotations. Our experiments demonstrate the benefits of our proposed method both quantitatively and qualitatively.
翻译:Omniditional 360 {deg} 图像在计算机视觉、机器人和其他领域发现许多有希望和令人振奋的应用程序,因为其可负担性、可移动性和360 {deg} 视野领域越来越高。存储、处理和直观360 {deg} 图像的最常用格式是等式三角投影(ERP ) 。 然而,非线性映像从360 {deg} 图像向ERP 图像引入的扭曲仍是一个屏障,使ERP图像无法像常规图像一样轻易地使用。 在估算360 {deg} 光学流时,这一点特别相关,因为扭曲需要适当缓解。 在本文中,我们提议了基于相近图像的360\deg} 光学流法。 我们的方法利用Gnomonic投影法将ERP 图像本地转换为视觉图像,并通过投影投影到立方形和常规的 立方形沙赫德龙脊柱, 来逐步完善估计的360 360 360 旋流场, 即使存在大规模旋转。 我们的实验展示了我们拟议方法的定量和定性的效益。