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Unsupervised Discovery of Object Radiance Fields

About

We study the problem of inferring an object-centric scene representation from a single image, aiming to derive a representation that explains the image formation process, captures the scene's 3D nature, and is learned without supervision. Most existing methods on scene decomposition lack one or more of these characteristics, due to the fundamental challenge in integrating the complex 3D-to-2D image formation process into powerful inference schemes like deep networks. In this paper, we propose unsupervised discovery of Object Radiance Fields (uORF), integrating recent progresses in neural 3D scene representations and rendering with deep inference networks for unsupervised 3D scene decomposition. Trained on multi-view RGB images without annotations, uORF learns to decompose complex scenes with diverse, textured background from a single image. We show that uORF enables novel tasks, such as scene segmentation and editing in 3D, and it performs well on these tasks and on novel view synthesis on three datasets.

Hong-Xing Yu, Leonidas J. Guibas, Jiajun Wu• 2021

Related benchmarks

TaskDatasetResultRank
Scene DecompositionCLEVR 567 unseen appearance uORF-variant (test)
ARI85.5
4
Scene SegmentationCLEVR 567
ARI86.3
4
Scene SegmentationRoom-Chair
ARI78.8
4
Scene SegmentationRoom-Diverse
ARI65.6
4
Scene Decompositionpacked-CLEVR-11 (test)
ARI0.832
3
Novel View SynthesisRoom-Chair (test)
LPIPS0.0821
3
Novel View SynthesisCLEVR-567 (test)
LPIPS0.0859
3
Novel View SynthesisRoom-Diverse (test)
LPIPS0.1729
3
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