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Ovis-U1 Technical Report

Ovis-U1 Technical Report

来源:Arxiv_logoArxiv
英文摘要

In this report, we introduce Ovis-U1, a 3-billion-parameter unified model that integrates multimodal understanding, text-to-image generation, and image editing capabilities. Building on the foundation of the Ovis series, Ovis-U1 incorporates a diffusion-based visual decoder paired with a bidirectional token refiner, enabling image generation tasks comparable to leading models like GPT-4o. Unlike some previous models that use a frozen MLLM for generation tasks, Ovis-U1 utilizes a new unified training approach starting from a language model. Compared to training solely on understanding or generation tasks, unified training yields better performance, demonstrating the enhancement achieved by integrating these two tasks. Ovis-U1 achieves a score of 69.6 on the OpenCompass Multi-modal Academic Benchmark, surpassing recent state-of-the-art models such as Ristretto-3B and SAIL-VL-1.5-2B. In text-to-image generation, it excels with scores of 83.72 and 0.89 on the DPG-Bench and GenEval benchmarks, respectively. For image editing, it achieves 4.00 and 6.42 on the ImgEdit-Bench and GEdit-Bench-EN, respectively. As the initial version of the Ovis unified model series, Ovis-U1 pushes the boundaries of multimodal understanding, generation, and editing.

Guo-Hua Wang、Shanshan Zhao、Xinjie Zhang、Liangfu Cao、Pengxin Zhan、Lunhao Duan、Shiyin Lu、Minghao Fu、Xiaohao Chen、Jianshan Zhao、Yang Li、Qing-Guo Chen

计算技术、计算机技术

Guo-Hua Wang,Shanshan Zhao,Xinjie Zhang,Liangfu Cao,Pengxin Zhan,Lunhao Duan,Shiyin Lu,Minghao Fu,Xiaohao Chen,Jianshan Zhao,Yang Li,Qing-Guo Chen.Ovis-U1 Technical Report[EB/OL].(2025-07-01)[2025-07-17].https://arxiv.org/abs/2506.23044.点此复制

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