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Semi-Supervised StyleGAN for Disentanglement Learning

Weili Nie, Tero Karras, Animesh Garg, Shoubhik Debnath, Anjul Patney, Ankit Patel, Anima Anandkumar

2020CaltechAUTHORS (California Institute of Technology)37 citations

Abstract

Disentanglement learning is crucial for obtaining disentangled representations and controllable generation. Current disentanglement methods face several inherent limitations: difficulty with high-resolution images, primarily on learning disentangled representations, and non-identifiability due to the unsupervised setting. To alleviate these limitations, we design new architectures and loss functions based on StyleGAN (Karras et al., 2019), for semi-supervised high-resolution disentanglement learning. We create two complex high-resolution synthetic datasets for systematic testing. We investigate the impact of limited supervision and find that using only 0.25%~2.5% of labeled data is sufficient for good disentanglement on both synthetic and real datasets. We propose new metrics to quantify generator controllability, and observe there may exist a crucial trade-off between disentangled representation learning and controllable generation. We also consider semantic fine-grained image editing to achieve better generalization to unseen images.

Topics & Concepts

Computer scienceGeneralizationGenerator (circuit theory)ControllabilityArtificial intelligenceRepresentation (politics)Machine learningExternal Data RepresentationFeature learningUnsupervised learningLabeled dataFace (sociological concept)IdentifiabilitySemi-supervised learningMathematicsPower (physics)Mathematical analysisLawPoliticsApplied mathematicsPolitical scienceSociologyPhysicsSocial scienceQuantum mechanicsDigital Media Forensic DetectionGenerative Adversarial Networks and Image SynthesisAdversarial Robustness in Machine Learning
Semi-Supervised StyleGAN for Disentanglement Learning | Litcius