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Co-SLAM: Joint Coordinate and Sparse Parametric Encodings for Neural Real-Time SLAM

Hengyi Wang, Jingwen Wang, Lourdes Agapito

2023233 citationsDOI

Abstract

We present Co-SLAM, a neural RGB-D SLAM system based on a hybrid representation, that performs robust camera tracking and high-fidelity surface reconstruction in real time. Co-SLAM represents the scene as a multi-resolution hash-grid to exploit its high convergence speed and ability to represent high-frequency local features. In addition, Co-SLAM incorporates one-blob encoding, to encourage surface coherence and completion in unobserved areas. This joint parametric-coordinate encoding enables real-time and robust performance by bringing the best of both worlds: fast convergence and surface hole filling. Moreover, our ray sampling strategy allows Co-SLAM to perform global bundle adjustment over all keyframes instead of requiring keyframe selection to maintain a small number of active keyframes as competing neural SLAM approaches do. Experimental results show that Co-SLAM runs at 10-17Hz and achieves state-of-the-art scene reconstruction results, and competitive tracking performance in various datasets and benchmarks (ScanNet, TUM, Replica, Synthetic RGBD). Project page: https://hengyiwang.github.io/projects/CoSLAM

Topics & Concepts

Computer scienceSimultaneous localization and mappingArtificial intelligenceComputer visionBundle adjustmentEncoding (memory)Convergence (economics)Neural codingParametric statisticsMathematicsRobotImage (mathematics)Economic growthStatisticsEconomicsMobile robotRobotics and Sensor-Based LocalizationAdvanced Neural Network Applications3D Surveying and Cultural Heritage
Co-SLAM: Joint Coordinate and Sparse Parametric Encodings for Neural Real-Time SLAM | Litcius