Litcius/Paper detail

RoDyn-SLAM: Robust Dynamic Dense RGB-D SLAM With Neural Radiance Fields

Haochen Jiang, Yueming Xu, Kejie Li, Jianfeng Feng, Li Zhang

2024IEEE Robotics and Automation Letters40 citationsDOI

Abstract

Leveraging neural implicit representation to conduct dense RGB-D SLAM has been studied in recent years. However, this approach relies on a static environment assumption and does not work robustly within a dynamic environment due to the inconsistent observation of geometry and photometry. To address the challenges presented in dynamic environments, we propose a novel dynamic SLAM framework with neural radiance field. Specifically, we introduce a motion mask generation method to filter out the invalid sampled rays. This design effectively fuses the optical flow mask and semantic mask to enhance the precision of motion mask. To further improve the accuracy of pose estimation, we have designed a divide-and-conquer pose optimization algorithm that distinguishes between keyframes and non-keyframes. The proposed edge warp loss can effectively enhance the geometry constraints between adjacent frames. Extensive experiments are conducted on the two challenging datasets, and the results show that RoDyn-SLAM achieves state-of-the-art performance among recent neural RGB-D methods in both accuracy and robustness. Our implementation of the Rodyn-SLAM will be open-sourced to benefit the community.

Topics & Concepts

RadianceArtificial intelligenceSimultaneous localization and mappingRGB color modelComputer visionComputer scienceRemote sensingGeologyRobotMobile robotRobotics and Sensor-Based LocalizationRobotic Path Planning AlgorithmsModular Robots and Swarm Intelligence