2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) 2019
DOI: 10.1109/cvpr.2019.00254
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DeepVoxels: Learning Persistent 3D Feature Embeddings

Abstract: In this work, we address the lack of 3D understanding of generative neural networks by introducing a persistent 3D feature embedding for view synthesis. To this end, we propose DeepVoxels, a learned representation that encodes the view-dependent appearance of a 3D scene without having to explicitly model its geometry. At its core, our approach is based on a Cartesian 3D grid of persistent embedded features that learn to make use of the underlying 3D scene structure. Our approach combines insights from 3D geome… Show more

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Cited by 434 publications
(379 citation statements)
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References 47 publications
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“…Numerous recent works employed DR for learning based 3D vision tasks, such as single view image reconstruction [Pontes et al 2017;Vogels et al 2018;Yan et al 2016;, face reconstruction [Richardson et al 2017], shape completion [Hu et al 2019], and image synthesis [Sitzmann et al 2018]. To describe a few, Pix2Scene [Rajeswar et al 2018] uses a point based DR to learn implicit 3D representations from images.…”
Section: Differentiable Renderingmentioning
confidence: 99%
“…Numerous recent works employed DR for learning based 3D vision tasks, such as single view image reconstruction [Pontes et al 2017;Vogels et al 2018;Yan et al 2016;, face reconstruction [Richardson et al 2017], shape completion [Hu et al 2019], and image synthesis [Sitzmann et al 2018]. To describe a few, Pix2Scene [Rajeswar et al 2018] uses a point based DR to learn implicit 3D representations from images.…”
Section: Differentiable Renderingmentioning
confidence: 99%
“…Novel view synthesis is typically solved using image based rendering techniques [Kang et al 2006], with recent approaches allowing for high-quality view synthesis results [Chaurasia et al 2013[Chaurasia et al , 2011Hedman et al 2017;Hedman and Kopf 2018;Penner and Zhang 2017]. With the emergence of deep neural networks, learning-based techniques have become an increasingly popular tool for novel view synthesis [Flynn et al 2016;Ji et al 2017;Kalantari et al 2016;Meshry et al 2019;Mildenhall et al 2019;Sitzmann et al 2019;Thies et al , 2018Zhou et al 2018]. To enable high-quality synthesis results, existing methods typically require multiple input views [Kang et al 2006;Penner and Zhang 2017].…”
Section: Related Work 21 Novel View Synthesismentioning
confidence: 99%
“…DeepVoxels [Sitzmann et al 2018] automatically learns a 3D feature representation for novel view synthesis but is limited to static objects and scenes, and the employed architecture does not lend itself to real-time inference. Martin-Brualla et al [2018] use neural networks to fill holes and generally improve the quality of a textured geometric representation.…”
Section: Neural Renderingmentioning
confidence: 99%