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SGS-SLAM: Semantic Gaussian Splatting For Neural Dense SLAM

Authors :
Li, Mingrui
Liu, Shuhong
Zhou, Heng
Zhu, Guohao
Cheng, Na
Deng, Tianchen
Wang, Hongyu
Li, Mingrui
Liu, Shuhong
Zhou, Heng
Zhu, Guohao
Cheng, Na
Deng, Tianchen
Wang, Hongyu
Publication Year :
2024

Abstract

We present SGS-SLAM, the first semantic visual SLAM system based on Gaussian Splatting. It incorporates appearance, geometry, and semantic features through multi-channel optimization, addressing the oversmoothing limitations of neural implicit SLAM systems in high-quality rendering, scene understanding, and object-level geometry. We introduce a unique semantic feature loss that effectively compensates for the shortcomings of traditional depth and color losses in object optimization. Through a semantic-guided keyframe selection strategy, we prevent erroneous reconstructions caused by cumulative errors. Extensive experiments demonstrate that SGS-SLAM delivers state-of-the-art performance in camera pose estimation, map reconstruction, precise semantic segmentation, and object-level geometric accuracy, while ensuring real-time rendering capabilities.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438522549
Document Type :
Electronic Resource