Omnidirectional Egomotion Estimation From Back-projection Flow

O. Shakernia, R. Vidal, S. Sastry
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引用次数: 35

Abstract

The current state-of-the-art for egomotion estimation with omnidirectional cameras is to map the optical flow to the sphere and then apply egomotion algorithms for spherical projection. In this paper, we propose to back-project image points to a virtual curved retina that is intrinsic to the geometry of the central panoramic camera, and compute the optical flow on this retina: the so-called back-projection flow. We show that well-known egomotion algorithms can be easily adapted to work with the back-projection flow. We present extensive simulation results showing that in the presence of noise, egomotion algorithms perform better by using back-projection flow when the camera translation is in the X-Y plane. Thus, the proposed method is preferable in applications where there is no Z-axis translation, such as ground robot navigation.
基于反投影流的全向自我运动估计
目前全向相机自运动估计的最新进展是将光流映射到球体上,然后应用自运动算法进行球面投影。在本文中,我们建议将图像点反向投影到中央全景相机几何结构固有的虚拟弯曲视网膜上,并计算该视网膜上的光流:所谓的反向投影流。我们证明了众所周知的自我运动算法可以很容易地适应于反向投影流。我们提供了大量的仿真结果,表明在存在噪声的情况下,当摄像机平移在X-Y平面时,使用反向投影流的自运动算法表现更好。因此,该方法适用于地面机器人导航等没有z轴平移的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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