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NICE-SLAM: Neural Implicit Scalable Encoding for SLAM

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arxiv 2112.12130 v2 pith:UW4LFSG3 submitted 2021-12-22 cs.CV

NICE-SLAM: Neural Implicit Scalable Encoding for SLAM

classification cs.CV
keywords nice-slamslamimplicitneuralinformationlargelocalmapping
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural implicit representations have recently shown encouraging results in various domains, including promising progress in simultaneous localization and mapping (SLAM). Nevertheless, existing methods produce over-smoothed scene reconstructions and have difficulty scaling up to large scenes. These limitations are mainly due to their simple fully-connected network architecture that does not incorporate local information in the observations. In this paper, we present NICE-SLAM, a dense SLAM system that incorporates multi-level local information by introducing a hierarchical scene representation. Optimizing this representation with pre-trained geometric priors enables detailed reconstruction on large indoor scenes. Compared to recent neural implicit SLAM systems, our approach is more scalable, efficient, and robust. Experiments on five challenging datasets demonstrate competitive results of NICE-SLAM in both mapping and tracking quality. Project page: https://pengsongyou.github.io/nice-slam

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