IGL-Nav: Incremental 3D Gaussian Localization for Image-goal Navigation
Wenxuan Guo, Xiuwei Xu, Hang Yin, Ziwei Wang, Jianjiang Feng, Jie Zhou, Jiwen Lu

TL;DR
IGL-Nav introduces an incremental 3D Gaussian localization framework for efficient, accurate image-goal navigation in 3D environments, leveraging scene representation updates and geometric matching.
Contribution
The paper proposes IGL-Nav, a novel incremental localization method that improves efficiency and accuracy in 3D-aware image-goal navigation using scene updates and geometric matching.
Findings
Outperforms state-of-the-art methods significantly.
Handles free-view image-goal setting effectively.
Deployable on real-world robotic platforms.
Abstract
Visual navigation with an image as goal is a fundamental and challenging problem. Conventional methods either rely on end-to-end RL learning or modular-based policy with topological graph or BEV map as memory, which cannot fully model the geometric relationship between the explored 3D environment and the goal image. In order to efficiently and accurately localize the goal image in 3D space, we build our navigation system upon the renderable 3D gaussian (3DGS) representation. However, due to the computational intensity of 3DGS optimization and the large search space of 6-DoF camera pose, directly leveraging 3DGS for image localization during agent exploration process is prohibitively inefficient. To this end, we propose IGL-Nav, an Incremental 3D Gaussian Localization framework for efficient and 3D-aware image-goal navigation. Specifically, we incrementally update the scene…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Vision and Imaging · Robot Manipulation and Learning
