The Transitive Information Theory and its Application to Deep Generative Models
Trung Ngo, Najwa Laabid, Ville Hautam\"aki, Merja, Hein\"aniemi

TL;DR
This paper introduces SemafoVAE, a hierarchical VAE model leveraging transitive information theory to improve controllability, disentanglement, and quality of generated images by bypassing traditional rate-distortion limitations.
Contribution
It develops a novel hierarchical VAE with a controllable prior using transitive information theory, enabling better disentanglement and controllable generation.
Findings
High-quality, controllable image generation achieved
Smooth traversal of disentangled factors demonstrated
Effective intervention at different representation levels
Abstract
Paradoxically, a Variational Autoencoder (VAE) could be pushed in two opposite directions, utilizing powerful decoder model for generating realistic images but collapsing the learned representation, or increasing regularization coefficient for disentangling representation but ultimately generating blurry examples. Existing methods narrow the issues to the rate-distortion trade-off between compression and reconstruction. We argue that a good reconstruction model does learn high capacity latents that encode more details, however, its use is hindered by two major issues: the prior is random noise which is completely detached from the posterior and allow no controllability in the generation; mean-field variational inference doesn't enforce hierarchy structure which makes the task of recombining those units into plausible novel output infeasible. As a result, we develop a system that learns…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Digital Media Forensic Detection · Advanced Image Processing Techniques
MethodsVariational Inference
