Back to Search Start Over

Object-Centric Relational Representations for Image Generation

Authors :
Butera, Luca
Cini, Andrea
Ferrante, Alberto
Alippi, Cesare
Source :
Transactions on Machine Learning Research. https://openreview.net/forum?id=7kWjB9zW90
Publication Year :
2023

Abstract

Conditioning image generation on specific features of the desired output is a key ingredient of modern generative models. However, existing approaches lack a general and unified way of representing structural and semantic conditioning at diverse granularity levels. This paper explores a novel method to condition image generation, based on object-centric relational representations. In particular, we propose a methodology to condition the generation of objects in an image on the attributed graph representing their structure and the associated semantic information. We show that such architectural biases entail properties that facilitate the manipulation and conditioning of the generative process and allow for regularizing the training procedure. The proposed conditioning framework is implemented by means of a neural network that learns to generate a 2D, multi-channel, layout mask of the objects, which can be used as a soft inductive bias in the downstream generative task. To do so, we leverage both 2D and graph convolutional operators. We also propose a novel benchmark for image generation consisting of a synthetic dataset of images paired with their relational representation. Empirical results show that the proposed approach compares favorably against relevant baselines.<br />Comment: Accepted at TMLR

Details

Database :
arXiv
Journal :
Transactions on Machine Learning Research. https://openreview.net/forum?id=7kWjB9zW90
Publication Type :
Report
Accession number :
edsarx.2303.14681
Document Type :
Working Paper