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Main Authors: Li, Jun, Chen, Zikun, Chen, Haibo, Chen, Shuo, Yang, Jian
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.19300
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author Li, Jun
Chen, Zikun
Chen, Haibo
Chen, Shuo
Yang, Jian
author_facet Li, Jun
Chen, Zikun
Chen, Haibo
Chen, Shuo
Yang, Jian
contents Novel object synthesis by integrating distinct textual concepts from diverse categories remains a significant challenge in Text-to-Image (T2I) generation. Existing methods often suffer from insufficient concept mixing, lack of rigorous evaluation, and suboptimal outputs-manifesting as conceptual imbalance, superficial combinations, or mere juxtapositions. To address these limitations, we propose Reinforcement Mixing Learning (RMLer), a framework that formulates cross-category concept fusion as a reinforcement learning problem: mixed features serve as states, mixing strategies as actions, and visual outcomes as rewards. Specifically, we design an MLP-policy network to predict dynamic coefficients for blending cross-category text embeddings. We further introduce visual rewards based on (1) semantic similarity and (2) compositional balance between the fused object and its constituent concepts, optimizing the policy via proximal policy optimization. At inference, a selection strategy leverages these rewards to curate the highest-quality fused objects. Extensive experiments demonstrate RMLer's superiority in synthesizing coherent, high-fidelity objects from diverse categories, outperforming existing methods. Our work provides a robust framework for generating novel visual concepts, with promising applications in film, gaming, and design.
format Preprint
id arxiv_https___arxiv_org_abs_2512_19300
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RMLer: Synthesizing Novel Objects across Diverse Categories via Reinforcement Mixing Learning
Li, Jun
Chen, Zikun
Chen, Haibo
Chen, Shuo
Yang, Jian
Computer Vision and Pattern Recognition
Novel object synthesis by integrating distinct textual concepts from diverse categories remains a significant challenge in Text-to-Image (T2I) generation. Existing methods often suffer from insufficient concept mixing, lack of rigorous evaluation, and suboptimal outputs-manifesting as conceptual imbalance, superficial combinations, or mere juxtapositions. To address these limitations, we propose Reinforcement Mixing Learning (RMLer), a framework that formulates cross-category concept fusion as a reinforcement learning problem: mixed features serve as states, mixing strategies as actions, and visual outcomes as rewards. Specifically, we design an MLP-policy network to predict dynamic coefficients for blending cross-category text embeddings. We further introduce visual rewards based on (1) semantic similarity and (2) compositional balance between the fused object and its constituent concepts, optimizing the policy via proximal policy optimization. At inference, a selection strategy leverages these rewards to curate the highest-quality fused objects. Extensive experiments demonstrate RMLer's superiority in synthesizing coherent, high-fidelity objects from diverse categories, outperforming existing methods. Our work provides a robust framework for generating novel visual concepts, with promising applications in film, gaming, and design.
title RMLer: Synthesizing Novel Objects across Diverse Categories via Reinforcement Mixing Learning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.19300