STGC-NeRF: Spatial-Temporal Geometric Consistency for LiDAR Neural Radiance Fields in Dynamic Scenes

Authors

  • Shangshu Yu Nanyang Technological University, Singapore
  • Xiaotian Sun Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China
  • Wen Li Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China
  • Qingshan Xu Nanyang Technological University, Singapore
  • Zhimin Yuan Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China
  • Sijie Wang Nanyang Technological University, Singapore
  • Rui She Beihang University, China
  • Cheng Wang Fujian Key Laboratory of Sensing and Computing for Smart Cities, Xiamen University, China Key Laboratory of Multimedia Trusted Perception and Efficient Computing, Ministry of Education of China, Xiamen University, China

DOI:

https://doi.org/10.1609/aaai.v39i9.33045

Abstract

While Neural Radiance Fields (NeRFs) have advanced the frontiers of novel view synthesis (NVS) using LiDAR data, they still struggle in dynamic scenes. Due to the low frequency and sparsity characteristics of LiDAR point clouds, it is challenging to spontaneously learn a dynamic and consistent scene representation from posed scans. In this paper, we propose STGC-NeRF, a novel LiDAR NeRF method that combines spatial-temporal geometry consistency to enhance the reconstruction of dynamic scenes. First, we propose a temporal geometry consistency regularization to enhance the regression of time-varying scene geometries from low-frequency LiDAR sequences. By estimating the pointwise correspondences between synthetic (or real) and real frames at different times, we convert them into various forms of temporal supervision. This alleviates the inconsistency caused by moving objects in dynamic scenes. Second, to improve the reconstruction of sparse LiDAR data, we propose spatial geometric consistency constraints. By computing multiple neighborhood feature descriptors incorporating geometric and contextual information, we capture structural geometry information from sparse LiDAR data. This helps encourage consistent direction, smoothness, and detail of the local surface. Extensive experiments on the KITTI-360 and nuScenes datasets demonstrate that STGC-NeRF outperforms state-of-the-art methods in both geometry and intensity accuracy for dynamic LiDAR scene reconstruction.

Published

2025-04-11

How to Cite

Yu, S., Sun, X., Li, W., Xu, Q., Yuan, Z., Wang, S., … Wang, C. (2025). STGC-NeRF: Spatial-Temporal Geometric Consistency for LiDAR Neural Radiance Fields in Dynamic Scenes. Proceedings of the AAAI Conference on Artificial Intelligence, 39(9), 9644–9652. https://doi.org/10.1609/aaai.v39i9.33045

Issue

Section

AAAI Technical Track on Computer Vision VIII