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Main Authors: Hu, Yubin, Wen, Kairui, Zhou, Heng, Guo, Xiaoyang, Liu, Yong-Jin
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.21739
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author Hu, Yubin
Wen, Kairui
Zhou, Heng
Guo, Xiaoyang
Liu, Yong-Jin
author_facet Hu, Yubin
Wen, Kairui
Zhou, Heng
Guo, Xiaoyang
Liu, Yong-Jin
contents Reconstructing accurate 3D surfaces for street-view scenarios is crucial for applications such as digital entertainment and autonomous driving simulation. However, existing street-view datasets, including KITTI, Waymo, and nuScenes, only offer noisy LiDAR points as ground-truth data for geometric evaluation of reconstructed surfaces. These geometric ground-truths often lack the necessary precision to evaluate surface positions and do not provide data for assessing surface normals. To overcome these challenges, we introduce the SS3DM dataset, comprising precise \textbf{S}ynthetic \textbf{S}treet-view \textbf{3D} \textbf{M}esh models exported from the CARLA simulator. These mesh models facilitate accurate position evaluation and include normal vectors for evaluating surface normal. To simulate the input data in realistic driving scenarios for 3D reconstruction, we virtually drive a vehicle equipped with six RGB cameras and five LiDAR sensors in diverse outdoor scenes. Leveraging this dataset, we establish a benchmark for state-of-the-art surface reconstruction methods, providing a comprehensive evaluation of the associated challenges. For more information, visit our homepage at https://ss3dm.top.
format Preprint
id arxiv_https___arxiv_org_abs_2410_21739
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SS3DM: Benchmarking Street-View Surface Reconstruction with a Synthetic 3D Mesh Dataset
Hu, Yubin
Wen, Kairui
Zhou, Heng
Guo, Xiaoyang
Liu, Yong-Jin
Computer Vision and Pattern Recognition
Reconstructing accurate 3D surfaces for street-view scenarios is crucial for applications such as digital entertainment and autonomous driving simulation. However, existing street-view datasets, including KITTI, Waymo, and nuScenes, only offer noisy LiDAR points as ground-truth data for geometric evaluation of reconstructed surfaces. These geometric ground-truths often lack the necessary precision to evaluate surface positions and do not provide data for assessing surface normals. To overcome these challenges, we introduce the SS3DM dataset, comprising precise \textbf{S}ynthetic \textbf{S}treet-view \textbf{3D} \textbf{M}esh models exported from the CARLA simulator. These mesh models facilitate accurate position evaluation and include normal vectors for evaluating surface normal. To simulate the input data in realistic driving scenarios for 3D reconstruction, we virtually drive a vehicle equipped with six RGB cameras and five LiDAR sensors in diverse outdoor scenes. Leveraging this dataset, we establish a benchmark for state-of-the-art surface reconstruction methods, providing a comprehensive evaluation of the associated challenges. For more information, visit our homepage at https://ss3dm.top.
title SS3DM: Benchmarking Street-View Surface Reconstruction with a Synthetic 3D Mesh Dataset
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.21739