Skip to content

Latest commit

 

History

History
12 lines (9 loc) · 806 Bytes

README.md

File metadata and controls

12 lines (9 loc) · 806 Bytes

Vision-Enhanced Lidar Odometry and Mapping (VELO) is a new algorithm for simultaneous localization and mapping using a set of cameras and a lidar. By tightly coupling sparse visual odometry and lidar scan matching, VELO is able to achieve reduced drift error compared to existing state-of-the-art algorithms for visual-lidar pose estimation. Moreover, the algorithm is capable of functioning when either the lidar or the camera is blinded. Experimental results are demonstrated using the KITTI data set as well as our own data set obtained using an off-road vehicle.

This code is currently work in progress and is not ready to be run. Use at your own risk.

Requirements

  • iSAM 1.7
  • OpenCV (latest git version, compile from source)
  • OpenCV contrib (xfeatures2d)
  • PCL 1.7.2
  • Ceres Solver
  • CUDA 7.5