Back to Search Start Over

Dynamic Dense RGB-D SLAM using Learning-based Visual Odometry

Authors :
Shen, Shihao
Cai, Yilin
Qiu, Jiayi
Li, Guangzhao
Publication Year :
2022

Abstract

We propose a dense dynamic RGB-D SLAM pipeline based on a learning-based visual odometry, TartanVO. TartanVO, like other direct methods rather than feature-based, estimates camera pose through dense optical flow, which only applies to static scenes and disregards dynamic objects. Due to the color constancy assumption, optical flow is not able to differentiate between dynamic and static pixels. Therefore, to reconstruct a static map through such direct methods, our pipeline resolves dynamic/static segmentation by leveraging the optical flow output, and only fuse static points into the map. Moreover, we rerender the input frames such that the dynamic pixels are removed and iteratively pass them back into the visual odometry to refine the pose estimate.<br />Comment: The report was withdrawn due to improper citation

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2205.05916
Document Type :
Working Paper