4.6 Article

PADLoC: LiDAR-Based Deep Loop Closure Detection and Registration Using Panoptic Attention

Journal

IEEE ROBOTICS AND AUTOMATION LETTERS
Volume 8, Issue 3, Pages 1319-1326

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2023.3239312

Keywords

SLAM; Deep learning methods; loop closure detection; point cloud registration; LiDAR

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In this work, a novel transformer-based head for point cloud matching and registration is proposed for loop closure detection and registration in LiDAR-based SLAM frameworks. The panoptic information is leveraged during training to improve the matching problem. Extensive evaluations demonstrate that PADLoC achieves state-of-the-art results on multiple real-world datasets.
A key component of graph-based SLAM systems is the ability to detect loop closures in a trajectory to reduce the drift accumulated over time from the odometry. Most LiDAR-based methods achieve this goal by using only the geometric information, disregarding the semantics of the scene. In this work, we introduce PADLoC for joint loop closure detection and registration in LiDAR-based SLAM frameworks. We propose a novel transformer-based head for point cloud matching and registration, and to leverage panoptic information during training time. In particular, we propose a novel loss function that reframes the matching problem as a classification task for the semantic labels and as a graph connectivity assignment for the instance labels. During inference, PADLoC does not require panoptic annotations, making it more versatile than other methods. Additionally, we show that using two shared matching and registration heads with their source and target inputs swapped increases the overall performance by enforcing forward-backward consistency. We perform extensive evaluations of PADLoC on multiple real-world datasets demonstrating that it achieves state-of-the-art results.

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