IEEE Access (Jan 2020)

DDL-SLAM: A Robust RGB-D SLAM in Dynamic Environments Combined With Deep Learning

  • Yongbao Ai,
  • Ting Rui,
  • Ming Lu,
  • Lei Fu,
  • Shuai Liu,
  • Song Wang

DOI
https://doi.org/10.1109/ACCESS.2020.2991441
Journal volume & issue
Vol. 8
pp. 162335 – 162342

Abstract

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Visual Simultaneous Localization and Mapping (VSLAM) has developed as the basic ability of robots in past few decades. There are a lot of open-sourced and impressive SLAM systems. However, the majority of the theories and approaches of SLAM systems at present are based on the static scene assumption, which is usually not practical in reality because moving objects are ubiquitous and inevitable under most circumstances. In this paper the DDL-SLAM (Dynamic Deep Learning SLAM) is proposed, a robust RGB-D SLAM system for dynamic scenarios that, based on ORB-SLAM2, adds the abilities of dynamic object segmentation and background inpainting. We are able to detect moving objects utilizing both semantic segmentation and multi-view geometry. Having a static scene map allows inpainting background of the frame which has been obscured by moving objects, therefore the localization accuracy is greatly improved in the dynamic environment. Experiment with a public RGB-D benchmark dataset, the results clarify that DDL-SLAM can significantly enhance the robustness and stability of the RGB-D SLAM system in the highly-dynamic environment.

Keywords