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Papers/Unsupervised Learning of Landmarks by Descriptor Vector Ex...

Unsupervised Learning of Landmarks by Descriptor Vector Exchange

James Thewlis, Samuel Albanie, Hakan Bilen, Andrea Vedaldi

2019-08-18ICCV 2019 10Unsupervised Facial Landmark DetectionFacial Landmark Detection
PaperPDFCode(official)

Abstract

Equivariance to random image transformations is an effective method to learn landmarks of object categories, such as the eyes and the nose in faces, without manual supervision. However, this method does not explicitly guarantee that the learned landmarks are consistent with changes between different instances of the same object, such as different facial identities. In this paper, we develop a new perspective on the equivariance approach by noting that dense landmark detectors can be interpreted as local image descriptors equipped with invariance to intra-category variations. We then propose a direct method to enforce such an invariance in the standard equivariant loss. We do so by exchanging descriptor vectors between images of different object instances prior to matching them geometrically. In this manner, the same vectors must work regardless of the specific object identity considered. We use this approach to learn vectors that can simultaneously be interpreted as local descriptors and dense landmarks, combining the advantages of both. Experiments on standard benchmarks show that this approach can match, and in some cases surpass state-of-the-art performance amongst existing methods that learn landmarks without supervision. Code is available at www.robots.ox.ac.uk/~vgg/research/DVE/.

Results

TaskDatasetMetricValueModel
Facial Recognition and Modelling300WNME4.65DVE
Facial Recognition and ModellingMAFLNME2.86DVE
Facial Recognition and ModellingAFLW-MTFLNME7.53DVE
Facial Recognition and ModellingAFLW (Zhang CVPR 2018 crops)NME6.54DVE
Facial Landmark Detection300WNME4.65DVE
Facial Landmark DetectionMAFLNME2.86DVE
Facial Landmark DetectionAFLW-MTFLNME7.53DVE
Facial Landmark DetectionAFLW (Zhang CVPR 2018 crops)NME6.54DVE
Face Reconstruction300WNME4.65DVE
Face ReconstructionMAFLNME2.86DVE
Face ReconstructionAFLW-MTFLNME7.53DVE
Face ReconstructionAFLW (Zhang CVPR 2018 crops)NME6.54DVE
3D300WNME4.65DVE
3DMAFLNME2.86DVE
3DAFLW-MTFLNME7.53DVE
3DAFLW (Zhang CVPR 2018 crops)NME6.54DVE
3D Face Modelling300WNME4.65DVE
3D Face ModellingMAFLNME2.86DVE
3D Face ModellingAFLW-MTFLNME7.53DVE
3D Face ModellingAFLW (Zhang CVPR 2018 crops)NME6.54DVE
3D Face Reconstruction300WNME4.65DVE
3D Face ReconstructionMAFLNME2.86DVE
3D Face ReconstructionAFLW-MTFLNME7.53DVE
3D Face ReconstructionAFLW (Zhang CVPR 2018 crops)NME6.54DVE

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