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Disentangling Factors of Variation with Cycle-Consistent Variational Auto-Encoders

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Generative models that learn disentangled representations for different factors of variation in an image can be very useful for targeted data augmentation. By sampling from the disentangled latent subspace of interest, we can efficiently generate new data necessary for a particular task. Learning disentangled representations is a challenging problem, especially when certain factors of variation are difficult to label. In this paper, we introduce a novel architecture that disentangles the latent space into two complementary subspaces by using only weak supervision in form of pairwise similarity labels. Inspired by the recent success of cycle-consistent adversarial architectures, we use cycle-consistency in a variational auto-encoder framework. Our non-adversarial approach is in contrast with the recent works that combine adversarial training with auto-encoders to disentangle representations. We show compelling results of disentangled latent subspaces on three datasets and compare with recent works that leverage adversarial training.

Ananya Harsh Jha, Saket Anand, Maneesh Singh, V. S. R. Veeravasarapu• 2018

Related benchmarks

TaskDatasetResultRank
Viewpoint EstimationPascal3D+ Car (test)
Median Error54.9
12
Pose EstimationPascal3D+ chair (test)
Median Angular Error (°)81.5
12
Pose EstimationSynthetic domain cars (unseen instances)
Med. Error (°)12.7
4
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