ServiceNow AI Research

The Promise of RL for Autoregressive Image Editing

Abstract

While image generation techniques are now capable of producing high quality images that respect prompts which span multiple sentences, the task of text-guided image editing remains a challenge. Even edit requests that consist of only a few words often fail to be executed correctly. We explore three strategies to enhance performance on a wide range of image editing tasks: supervised fine-tuning (SFT), reinforcement learning (RL), and Chain-of-Thought (CoT) reasoning. In order to study all these components in one consistent framework we adopt an autoregressive multimodal model that processes textual and visual tokens in a unified manner. We find RL combined with a large multi-modal LLM verifier to be the most effective of these strategies. As a result, we release EARL: Editing with Autoregression and RL, a strong RL-based image editing model that performs competitively on a diverse range of edits compared to strong baselines with much more training data. Thus, EARL pushes the frontier of autoregressive multimodal models on image editing.

Publication
Neural Information Processing Systems (NeurIPS)
Rabiul Awal
Rabiul Awal
Visiting Researcher

Visiting Researcher at AI Frontier Research located at Montreal, QC, Canada.

Juan A. Rodriguez
Juan A. Rodriguez
Visiting Researcher

Visiting Researcher at AI Frontier Research located at Montreal, QC, Canada.

Siva Reddy
Siva Reddy
Research Scientist

Research Scientist at AI Research Partnerships & Ecosystem​ located at Montreal, QC, Canada.

Christopher Pal
Christopher Pal
Distinguished Scientist

Distinguished Scientist at AI Research Partnerships & Ecosystem​ located at Montreal, QC, Canada.