OpenRooms: An Open Framework for Photorealistic Indoor Scene Datasets

2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR 2021(2021)

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摘要
We propose a novel framework for creating large-scale photorealistic datasets of indoor scenes, with ground truth geometry, material, lighting and semantics. Our goal is to make the dataset creation process widely accessible, transforming scans into photorealistic datasets with high-quality ground truth for appearance, layout, semantic labels, high quality spatially-varying BRDF and complex lighting, including direct, indirect and visibility components. This enables important applications in inverse rendering, scene understanding and robotics. We show that deep networks trained on the proposed dataset achieve competitive performance for shape, material and lighting estimation on real images, enabling photorealistic augmented reality applications, such as object insertion and material editing. We also show our semantic labels may be used for segmentation and multi-task learning. Finally, we demonstrate that our framework may also be integrated with physics engines, to create virtual robotics environments with unique ground truth such as friction coefficients and correspondence to real scenes. The dataset and all the tools to create such datasets will be made publicly available.(1)
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关键词
direct visibility components,indirect visibility components,scene understanding,virtual robotics,lighting estimation,photorealistic augmented reality,semantic labels,open framework,photorealistic indoor scene datasets,large-scale photorealistic datasets,ground truth geometry,dataset creation,high-quality ground truth,complex lighting,BRDF,deep networks,real images,friction coefficients
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