PluGeN: Multi-Label Conditional Generation From Pre-Trained Models
Maciej Wo{\l}czyk, Magdalena Proszewska, {\L}ukasz Maziarka, Maciej, Zi\k{e}ba, Patryk Wielopolski, Rafa{\l} Kurczab, Marek \'Smieja

TL;DR
PluGeN is a plugin technique for pre-trained generative models that disentangles latent representations to enable conditional generation and attribute manipulation without retraining the entire model.
Contribution
It introduces a flow-based module that transforms entangled latent spaces into independent attribute-specific distributions, allowing flexible conditional generation.
Findings
Enables generation of samples with desired attributes.
Allows manipulation of existing samples' attributes.
Preserves quality of original generative models.
Abstract
Modern generative models achieve excellent quality in a variety of tasks including image or text generation and chemical molecule modeling. However, existing methods often lack the essential ability to generate examples with requested properties, such as the age of the person in the photo or the weight of the generated molecule. Incorporating such additional conditioning factors would require rebuilding the entire architecture and optimizing the parameters from scratch. Moreover, it is difficult to disentangle selected attributes so that to perform edits of only one attribute while leaving the others unchanged. To overcome these limitations we propose PluGeN (Plugin Generative Network), a simple yet effective generative technique that can be used as a plugin to pre-trained generative models. The idea behind our approach is to transform the entangled latent representation using a…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Code & Models
Videos
Taxonomy
TopicsCell Image Analysis Techniques · Generative Adversarial Networks and Image Synthesis · Machine Learning in Materials Science
