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Papers/AutoLink: Self-supervised Learning of Human Skeletons and ...

AutoLink: Self-supervised Learning of Human Skeletons and Object Outlines by Linking Keypoints

Xingzhe He, Bastian Wandt, Helge Rhodin

2022-05-21Unsupervised Keypoint EstimationUnsupervised Human Pose EstimationSelf-Supervised LearningUnsupervised Facial Landmark DetectionPose EstimationUnsupervised Landmark Detection
PaperPDFCode(official)

Abstract

Structured representations such as keypoints are widely used in pose transfer, conditional image generation, animation, and 3D reconstruction. However, their supervised learning requires expensive annotation for each target domain. We propose a self-supervised method that learns to disentangle object structure from the appearance with a graph of 2D keypoints linked by straight edges. Both the keypoint location and their pairwise edge weights are learned, given only a collection of images depicting the same object class. The resulting graph is interpretable, for example, AutoLink recovers the human skeleton topology when applied to images showing people. Our key ingredients are i) an encoder that predicts keypoint locations in an input image, ii) a shared graph as a latent variable that links the same pairs of keypoints in every image, iii) an intermediate edge map that combines the latent graph edge weights and keypoint locations in a soft, differentiable manner, and iv) an inpainting objective on randomly masked images. Although simpler, AutoLink outperforms existing self-supervised methods on the established keypoint and pose estimation benchmarks and paves the way for structure-conditioned generative models on more diverse datasets. Project website: https://xingzhehe.github.io/autolink/.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingMAFLNME3.54AutoLink
Facial Recognition and ModellingMAFL UnalignedNME5.24AutoLink
Facial Landmark DetectionMAFLNME3.54AutoLink
Facial Landmark DetectionMAFL UnalignedNME5.24AutoLink
Face ReconstructionMAFLNME3.54AutoLink
Face ReconstructionMAFL UnalignedNME5.24AutoLink
3DMAFLNME3.54AutoLink
3DMAFL UnalignedNME5.24AutoLink
3D Face ModellingMAFLNME3.54AutoLink
3D Face ModellingMAFL UnalignedNME5.24AutoLink
3D Face ReconstructionMAFLNME3.54AutoLink
3D Face ReconstructionMAFL UnalignedNME5.24AutoLink
Unsupervised Landmark DetectionMAFL UnalignedMean NME5.24AutoLink

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