Integrating Reinforcement Learning with Visual Generative Models: Foundations and Advances
Abstract
Generative models have made significant progress in synthesizing visual content, including images, videos, and 3D/4D structures. However, they are typically trained with surrogate objectives such as likelihood or reconstruction loss, which often misalign with perceptual quality, semantic accuracy, or physical realism. Reinforcement learning (RL) offers a principled framework for optimizing non-differentiable, preference-driven, and temporally structured objectives. Recent advances demonstrate its effectiveness in enhancing controllability, consistency, and human alignment across generative tasks. This survey provides a systematic overview of RL-based methods for visual content generation. We review the evolution of RL from classical control to its role as a general-purpose optimization tool, and examine its integration into image, video, and 3D/4D generation. Across these domains, RL serves not only as a fine-tuning mechanism but also as a structural component for aligning generation with complex, high-level goals. We conclude with open challenges and future research directions at the intersection of RL and generative modeling.
Keywords
Cite
@article{arxiv.2508.10316,
title = {Integrating Reinforcement Learning with Visual Generative Models: Foundations and Advances},
author = {Yuanzhi Liang and Yijie Fang and Ke Hao and Rui Li and Ziqi Ni and Ruijie Su and Chi Zhang},
journal= {arXiv preprint arXiv:2508.10316},
year = {2026}
}
Comments
Ongoing work. We maintain a companion website with an up-to-date version of this survey at: https://visgenrlsurvey.liangyzh18.workers.dev/