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WayveScenes101: A Dataset and Benchmark for Novel View Synthesis in Autonomous Driving

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arxiv 2407.08280 v1 pith:QCBZYWGC submitted 2024-07-11 cs.CV cs.GRcs.RO

WayveScenes101: A Dataset and Benchmark for Novel View Synthesis in Autonomous Driving

classification cs.CV cs.GRcs.RO
keywords scenesdatasetdrivingacrosscameraconditionsdesigneddetailed
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present WayveScenes101, a dataset designed to help the community advance the state of the art in novel view synthesis that focuses on challenging driving scenes containing many dynamic and deformable elements with changing geometry and texture. The dataset comprises 101 driving scenes across a wide range of environmental conditions and driving scenarios. The dataset is designed for benchmarking reconstructions on in-the-wild driving scenes, with many inherent challenges for scene reconstruction methods including image glare, rapid exposure changes, and highly dynamic scenes with significant occlusion. Along with the raw images, we include COLMAP-derived camera poses in standard data formats. We propose an evaluation protocol for evaluating models on held-out camera views that are off-axis from the training views, specifically testing the generalisation capabilities of methods. Finally, we provide detailed metadata for all scenes, including weather, time of day, and traffic conditions, to allow for a detailed model performance breakdown across scene characteristics. Dataset and code are available at https://github.com/wayveai/wayve_scenes.

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Cited by 3 Pith papers

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