FiG-NeRF: Figure-Ground Neural Radiance Fields for 3D Object Category Modelling

2021 INTERNATIONAL CONFERENCE ON 3D VISION (3DV 2021)(2021)

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摘要
We investigate the use of Neural Radiance Fields (NeRF) to learn high quality 3D object category models from collections of input images. In contrast to previous work, we are able to do this whilst simultaneously separating foreground objects from their varying backgrounds. We achieve this via a 2-component NeRF model, FiG-NeRF, that prefers explanation of the scene as a geometrically constant background and a deformable foreground that represents the object category. We show that this method can learn accurate 3D object category models using only photometric supervision and casually captured images of the objects. Additionally, our 2-part decomposition allows the model to perform accurate and crisp amodal segmentation. We quantitatively evaluate our method with view synthesis and image fidelity metrics, using synthetic, lab-captured, and in-the-wild data. Our results demonstrate convincing 3D object category modelling that exceed the performance of existing methods.
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关键词
FiG-NeRF,foreground objects,2-component NeRF model,figure-ground neural radiance fields,high quality 3D object category models,photometric supervision,amodal segmentation
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