René's URL Explorer Experiment


Title: ReconFusion

Open Graph Title: ReconFusion: 3D Reconstruction with Diffusion Priors

X Title: ReconFusion: 3D Reconstruction with Diffusion Priors

Open Graph Description: 3D reconstruction methods such as Neural Radiance Fields (NeRFs) excel at rendering photorealistic novel views of complex scenes. However, recovering a high-quality NeRF typically requires tens to hundreds of input images, resulting in a time-consuming capture process. We present ReconFusion to reconstruct real-world scenes using only a few photos. Our approach leverages a diffusion prior for novel view synthesis, trained on synthetic and multiview datasets, which regularizes a NeRF-based 3D reconstruction pipeline at novel camera poses beyond those captured by the set of input images. Our method synthesizes realistic geometry and texture in underconstrained regions while preserving the appearance of observed regions. We perform an extensive evaluation across various real-world datasets, including forward-facing and 360-degree scenes, demonstrating significant performance improvements over previous few-view NeRF reconstruction approaches.

X Description: 3D reconstruction methods such as Neural Radiance Fields (NeRFs) excel at rendering photorealistic novel views of complex scenes. However, recovering a high-quality NeRF typically requires tens to hundreds of input images, resulting in a time-consuming capture process. We present ReconFusion to reconstruct real-world scenes using only a few photos. Our approach leverages a diffusion prior for novel view synthesis, trained on synthetic and multiview datasets, which regularizes a NeRF-based 3D reconstruction pipeline at novel camera poses beyond those captured by the set of input images. Our method synthesizes realistic geometry and texture in underconstrained regions while preserving the appearance of observed regions. We perform an extensive evaluation across various real-world datasets, including forward-facing and 360-degree scenes, demonstrating significant performance improvements over previous few-view NeRF reconstruction approaches.

Opengraph URL: https://reconfusion.github.io/

direct link

Domain: reconfusion.github.io

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og:imagehttps://reconfusion.github.io/img/overview_combined.png
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twitter:imagehttps://reconfusion.github.io/img/overview_combined.png

Links:

Rundi Wu https://www.cs.columbia.edu/~rundi/
Ben Mildenhall http://bmild.github.io/
Philipp Henzler https://henzler.github.io/
Keunhong Park https://keunhong.com/
Ruiqi Gao https://ruiqigao.github.io/
Daniel Watson https://scholar.google.com/citations?user=_pKKv2QAAAAJ&hl=en/
Pratul P. Srinivasan https://pratulsrinivasan.github.io/
Dor Verbin https://dorverbin.github.io/
Jonathan T. Barron https://jonbarron.info/
Ben Poole https://poolio.github.io/
Aleksander Holynski https://holynski.org/
arXiv https://arxiv.org/abs/2312.02981
Data https://drive.google.com/drive/folders/10oT2_OQ9Sjh5wlfJQoGx2y7ZKYwpgNg5?usp=sharing
Michaël Gharbihttp://mgharbi.com/
Ref-NeRFhttps://dorverbin.github.io/refnerf

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URLs of crawlers that visited me.