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Main Authors: Hussain, Rukhshanda, Lim, Hui Xian Grace, Chen, Borchun, Shah, Mubarak, Lim, Ser Nam
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.06394
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author Hussain, Rukhshanda
Lim, Hui Xian Grace
Chen, Borchun
Shah, Mubarak
Lim, Ser Nam
author_facet Hussain, Rukhshanda
Lim, Hui Xian Grace
Chen, Borchun
Shah, Mubarak
Lim, Ser Nam
contents Novel view synthesis has observed tremendous developments since the arrival of NeRFs. However, Nerf models overfit on a single scene, lacking generalization to out of distribution objects. Recently, diffusion models have exhibited remarkable performance on introducing generalization in view synthesis. Inspired by these advancements, we explore the capabilities of a pretrained stable diffusion model for view synthesis without explicit 3D priors. Specifically, we base our method on a personalized text to image model, Dreambooth, given its strong ability to adapt to specific novel objects with a few shots. Our research reveals two interesting findings. First, we observe that Dreambooth can learn the high level concept of a view, compared to arguably more complex strategies which involve finetuning diffusions on large amounts of multi-view data. Second, we establish that the concept of a view can be disentangled and transferred to a novel object irrespective of the original object's identify from which the views are learnt. Motivated by this, we introduce a learning strategy, FSViewFusion, which inherits a specific view through only one image sample of a single scene, and transfers the knowledge to a novel object, learnt from few shots, using low rank adapters. Through extensive experiments we demonstrate that our method, albeit simple, is efficient in generating reliable view samples for in the wild images. Code and models will be released.
format Preprint
id arxiv_https___arxiv_org_abs_2403_06394
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle FSViewFusion: Few-Shots View Generation of Novel Objects
Hussain, Rukhshanda
Lim, Hui Xian Grace
Chen, Borchun
Shah, Mubarak
Lim, Ser Nam
Computer Vision and Pattern Recognition
Novel view synthesis has observed tremendous developments since the arrival of NeRFs. However, Nerf models overfit on a single scene, lacking generalization to out of distribution objects. Recently, diffusion models have exhibited remarkable performance on introducing generalization in view synthesis. Inspired by these advancements, we explore the capabilities of a pretrained stable diffusion model for view synthesis without explicit 3D priors. Specifically, we base our method on a personalized text to image model, Dreambooth, given its strong ability to adapt to specific novel objects with a few shots. Our research reveals two interesting findings. First, we observe that Dreambooth can learn the high level concept of a view, compared to arguably more complex strategies which involve finetuning diffusions on large amounts of multi-view data. Second, we establish that the concept of a view can be disentangled and transferred to a novel object irrespective of the original object's identify from which the views are learnt. Motivated by this, we introduce a learning strategy, FSViewFusion, which inherits a specific view through only one image sample of a single scene, and transfers the knowledge to a novel object, learnt from few shots, using low rank adapters. Through extensive experiments we demonstrate that our method, albeit simple, is efficient in generating reliable view samples for in the wild images. Code and models will be released.
title FSViewFusion: Few-Shots View Generation of Novel Objects
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2403.06394