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Demystifying Inter-Class Disentanglement

About

Learning to disentangle the hidden factors of variations within a set of observations is a key task for artificial intelligence. We present a unified formulation for class and content disentanglement and use it to illustrate the limitations of current methods. We therefore introduce LORD, a novel method based on Latent Optimization for Representation Disentanglement. We find that latent optimization, along with an asymmetric noise regularization, is superior to amortized inference for achieving disentangled representations. In extensive experiments, our method is shown to achieve better disentanglement performance than both adversarial and non-adversarial methods that use the same level of supervision. We further introduce a clustering-based approach for extending our method for settings that exhibit in-class variation with promising results on the task of domain translation.

Aviv Gabbay, Yedid Hoshen• 2019

Related benchmarks

TaskDatasetResultRank
Viewpoint EstimationPascal3D+ Car (test)
Median Error71.3
12
Pose EstimationPascal3D+ chair (test)
Median Angular Error (°)89.8
12
Pose EstimationSynthetic domain cars (unseen instances)
Med. Error (°)9.9
4
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