OmniSLAM: Omnidirectional Localization and Dense Mapping for Wide-Baseline Multi-Camera Systems

Changhee Won1, Hochang Seok2, Zhaopeng Cui3, Marc Pollefeys4, Jongwoo Lim1

  • 1Hanyang University
  • 2Hanyang univ.
  • 3Zhejiang University
  • 4ETH Zurich

Details

09:15 - 09:30 | Mon 1 Jun | Room T14 | MoA14.1

Session: Omnidirectional Vision

17:30 - 17:45 | Mon 1 Jun | Room T1 | MoD01.4

Session: Awards IV – Unmanned Aerial Vehicles, Robot Vision

Abstract

In this paper, we present an omnidirectional localization and dense mapping system for a wide-baseline multiview stereo setup with ultra-wide field-of-view (FOV) fisheye cameras, which has a 360◦ coverage of stereo observations of the environment. For more practical and accurate reconstruction, we first introduce improved and light-weighted deep neural networks for the omnidirectional depth estimation, which are faster and more accurate than the existing networks. Second, we integrate our omnidirectional depth estimates into the visual odometry (VO) and add a loop closing module for global consistency. Using the estimated depth map, we reproject keypoints onto each other view, which leads to better and more efficient feature matching process. Finally, we fuse the omnidirectional depth maps and the estimated rig poses into the truncated signed distance function (TSDF) volume to acquire a 3D map. We evaluate our method on synthetic datasets with ground-truth and real-world sequences of challenging environments, and the extensive experiments show that the proposed system generates excellent reconstruction results in both synthetic and real-world environments.