We introduce Ovis-Image, a 7B text-to-image model specifically optimized for high-quality text rendering, designed to operate efficiently under stringent computational constraints. Built upon our previous Ovis-U1 framework, Ovis-Image integrates a diffusion-based visual decoder with the stronger Ovis 2.5 multimodal backbone, leveraging a text-centric training pipeline that combines large-scale pre-training with carefully tailored post-training refinements. Despite its compact architecture, Ovis-Image achieves text rendering performance on par with significantly larger open models such as Qwen-Image and approaches closed-source systems like Seedream and GPT4o. Crucially, the model remains deployable on a single high-end GPU with moderate memory, narrowing the gap between frontier-level text rendering and practical deployment. Our results indicate that combining a strong multimodal backbone with a carefully designed, text-focused training recipe is sufficient to achieve reliable bilingual text rendering without resorting to oversized or proprietary models.
Ovis-Image Technical Report
Ovis-Image is a 7B text-to-image model optimized for high-quality text rendering under computational constraints, combining a diffusion-based visual decoder with a multimodal backbone and a text-centric training pipeline.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 11
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2511.22982ARXIV-DEFAULT
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