Feb. 6, 2024, 5:52 a.m. | Yurui Chen Junge Zhang Ziyang Xie Wenye Li Feihu Zhang Jiachen Lu Li Zhang

cs.CV updates on arXiv.org arxiv.org

Autonomous driving simulation system plays a crucial role in enhancing self-driving data and simulating complex and rare traffic scenarios, ensuring navigation safety. However, traditional simulation systems, which often heavily rely on manual modeling and 2D image editing, struggled with scaling to extensive scenes and generating realistic simulation data. In this study, we present S-NeRF++, an innovative autonomous driving simulation system based on neural reconstruction. Trained on widely-used self-driving datasets such as nuScenes and Waymo, S-NeRF++ can generate a large number …

2d image autonomous autonomous driving cs.cv data driving editing image modeling navigation nerf role safety scaling self-driving simulation study systems traffic via

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