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Novel View Extrapolation with Video Diffusion Priors

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The field of novel view synthesis has made significant strides thanks to the development of radiance field methods. However, most radiance field techniques are far better at novel view interpolation than novel view extrapolation where the synthesis novel views are far beyond the observed training views. We design ViewExtrapolator, a novel view synthesis approach that leverages the generative priors of Stable Video Diffusion (SVD) for realistic novel view extrapolation. By redesigning the SVD denoising process, ViewExtrapolator refines the artifact-prone views rendered by radiance fields, greatly enhancing the clarity and realism of the synthesized novel views. ViewExtrapolator is a generic novel view extrapolator that can work with different types of 3D rendering such as views rendered from point clouds when only a single view or monocular video is available. Additionally, ViewExtrapolator requires no fine-tuning of SVD, making it both data-efficient and computation-efficient. Extensive experiments demonstrate the superiority of ViewExtrapolator in novel view extrapolation. Project page: \url{https://kunhao-liu.github.io/ViewExtrapolator/}.

Kunhao Liu, Ling Shao, Shijian Lu• 2024

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisMip-NeRF 360
PSNR20.84
143
Novel View SynthesisLLFF
PSNR18.27
130
Depth EstimationScanNet
AbsRel3.794
108
Novel View SynthesisWaymo
KID0.18
7
Novel View SynthesisVRNeRF unseen
PSNR16.716
6
Depth EstimationTartanAir
Abs Rel3.791
6
Novel View SynthesisMipNeRF360 unseen
PSNR14.85
6
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