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Loopy-SLAM: Dense Neural SLAM with Loop Closures

About

Neural RGBD SLAM techniques have shown promise in dense Simultaneous Localization And Mapping (SLAM), yet face challenges such as error accumulation during camera tracking resulting in distorted maps. In response, we introduce Loopy-SLAM that globally optimizes poses and the dense 3D model. We use frame-to-model tracking using a data-driven point-based submap generation method and trigger loop closures online by performing global place recognition. Robust pose graph optimization is used to rigidly align the local submaps. As our representation is point based, map corrections can be performed efficiently without the need to store the entire history of input frames used for mapping as typically required by methods employing a grid based mapping structure. Evaluation on the synthetic Replica and real-world TUM-RGBD and ScanNet datasets demonstrate competitive or superior performance in tracking, mapping, and rendering accuracy when compared to existing dense neural RGBD SLAM methods. Project page: notchla.github.io/Loopy-SLAM.

Lorenzo Liso, Erik Sandstr\"om, Vladimir Yugay, Luc Van Gool, Martin R. Oswald• 2024

Related benchmarks

TaskDatasetResultRank
Camera TrackingReplica
Rotation Error (rm-0)0.24
38
Mesh ReconstructionReplica Room 0
Depth L1 Error0.23
21
TrackingScanNet
ATE RMSE (Seq 00)4.2
18
TrackingScanNet++
Metric c25.16
9
Mesh ReconstructionReplica R1 (Room 1)
Depth L1 Error0.2
8
Mesh ReconstructionReplica Room 2
Depth L1 Error0.42
8
Mesh ReconstructionReplica Office 1
Depth L1 Error0.46
8
Mesh ReconstructionReplica Office 3
Depth L1 Error0.37
8
Mesh ReconstructionReplica Office 4
Depth L10.24
8
Mesh ReconstructionReplica Average
Depth L1 Error0.35
8
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