Robust obstacle avoidance is one of the critical steps for successful goal-driven indoor navigation tasks.Due to the obstacle missing in the visual image and the possible missed detection issue, visual image-based obstacle avoidance techniques still suffer from unsatisfactory robustness. To mitigate it, in this paper, we propose a novel implicit obstacle map-driven indoor navigation framework for robust obstacle avoidance, where an implicit obstacle map is learned based on the historical trial-and-error experience rather than the visual image. In order to further improve the navigation efficiency, a non-local target memory aggregation module is designed to leverage a non-local network to model the intrinsic relationship between the target semantic and the target orientation clues during the navigation process so as to mine the most target-correlated object clues for the navigation decision. Extensive experimental results on AI2-Thor and RoboTHOR benchmarks verify the excellent obstacle avoidance and navigation efficiency of our proposed method. The core source code is available at https://github.com/xwaiyy123/object-navigation.
@article{arxiv.2308.12845,
title = {Implicit Obstacle Map-driven Indoor Navigation Model for Robust Obstacle Avoidance},
author = {Wei Xie and Haobo Jiang and Shuo Gu and Jin Xie},
journal= {arXiv preprint arXiv:2308.12845},
year = {2023}
}
Comments
9 pages, 7 figures, 43 references. This paper has been accepted for ACM MM 2023