ArXiv TLDR

Offline-Online Hierarchical 3D Global Relocalization With Synthetic LiDAR Sensing and Descriptor-Space Retrieval

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2605.07741

Jiahua Ren, Kai Shen, Muhua Zhang, Lei Ma

cs.RO

TLDR

This paper introduces an offline-online hierarchical framework for fast 3D global relocalization using synthetic LiDAR and descriptor-space retrieval.

Key contributions

  • Proposes an offline-online hierarchical framework to decouple the 3D global relocalization search space.
  • Generates candidate poses and geometric descriptor indices offline using simulated LiDAR scans in a grid map.
  • Achieves coarse pose estimation via global retrieval, followed by precise 6-DoF registration online.
  • Demonstrates 3s average relocalization time and 8cm accuracy, an order-of-magnitude faster than prior methods.

Why it matters

This paper significantly improves the efficiency of 3D global relocalization for mobile robots in large environments. By decoupling the search space into offline and online phases, it drastically reduces computation time. This advancement enables faster and more practical deployment of robots requiring precise localization.

Original Abstract

3D global relocalization is one of the key capabilities for mobile robots in practical applications. However, in large scale spaces, existing methods often suffer from prolonged online relocalization time due to factors such as the massive pose search space and high computational overhead. To address these issues, this paper proposes an offline-online hierarchical framework that decouples the search space. In the offline phase, candidate positions and their corresponding geometric descriptor indices are generated in the map by simulating LiDAR scans within the grid map. In the online phase, a coarse pose estimate is first obtained via global retrieval, followed by point cloud registration to output precise 6-DoF pose estimates. Real-world experiments demonstrate that the proposed method achieves an average relocalization time of 3 s and an average localization accuracy of 8 cm in 3D environments. Compared with existing global relocalization methods, the proposed method achieves an order-of-magnitude improvement in computational efficiency while delivering comparable relocalization accuracy.

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