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Unsupervised Keypoints from Pretrained Diffusion Models
by
Mahajan, Shweta
, Sharma, Gopal
, Tagliasacchi, Andrea
, Hedlin, Eric
, He, Xingzhe
, Isack, Hossam
, Abhishek Kar Helge Rhodin
, Yi, Kwang Moo
in
Datasets
/ Neural networks
/ Unsupervised learning
2024
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Do you wish to request the book?
Unsupervised Keypoints from Pretrained Diffusion Models
by
Mahajan, Shweta
, Sharma, Gopal
, Tagliasacchi, Andrea
, Hedlin, Eric
, He, Xingzhe
, Isack, Hossam
, Abhishek Kar Helge Rhodin
, Yi, Kwang Moo
in
Datasets
/ Neural networks
/ Unsupervised learning
2024
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Paper
Unsupervised Keypoints from Pretrained Diffusion Models
2024
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Overview
Unsupervised learning of keypoints and landmarks has seen significant progress with the help of modern neural network architectures, but performance is yet to match the supervised counterpart, making their practicability questionable. We leverage the emergent knowledge within text-to-image diffusion models, towards more robust unsupervised keypoints. Our core idea is to find text embeddings that would cause the generative model to consistently attend to compact regions in images (i.e. keypoints). To do so, we simply optimize the text embedding such that the cross-attention maps within the denoising network are localized as Gaussians with small standard deviations. We validate our performance on multiple datasets: the CelebA, CUB-200-2011, Tai-Chi-HD, DeepFashion, and Human3.6m datasets. We achieve significantly improved accuracy, sometimes even outperforming supervised ones, particularly for data that is non-aligned and less curated. Our code is publicly available and can be found through our project page: https://ubc-vision.github.io/StableKeypoints/
Publisher
Cornell University Library, arXiv.org
Subject
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