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arXiv 提交日期: 2026-04-21
📄 Abstract - Wan-Image: Pushing the Boundaries of Generative Visual Intelligence

We present Wan-Image, a unified visual generation system explicitly engineered to paradigm-shift image generation models from casual synthesizers into professional-grade productivity tools. While contemporary diffusion models excel at aesthetic generation, they frequently encounter critical bottlenecks in rigorous design workflows that demand absolute controllability, complex typography rendering, and strict identity preservation. To address these challenges, Wan-Image features a natively unified multi-modal architecture by synergizing the cognitive capabilities of large language models with the high-fidelity pixel synthesis of diffusion transformers, which seamlessly translates highly nuanced user intents into precise visual outputs. It is fundamentally powered by large-scale multi-modal data scaling, a systematic fine-grained annotation engine, and curated reinforcement learning data to surpass basic instruction following and unlock expert-level professional capabilities. These include ultra-long complex text rendering, hyper-diverse portrait generation, palette-guided generation, multi-subject identity preservation, coherent sequential visual generation, precise multi-modal interactive editing, native alpha-channel generation, and high-efficiency 4K synthesis. Across diverse human evaluations, Wan-Image exceeds Seedream 5.0 Lite and GPT Image 1.5 in overall performance, reaching parity with Nano Banana Pro in challenging tasks. Ultimately, Wan-Image revolutionizes visual content creation across e-commerce, entertainment, education, and personal productivity, redefining the boundaries of professional visual synthesis.

顶级标签: multi-modal text-to-image aigc
详细标签: diffusion transformers multi-modal understanding reinforcement learning professional image generation identity preservation 或 搜索:

万像:突破生成式视觉智能的边界 / Wan-Image: Pushing the Boundaries of Generative Visual Intelligence


1️⃣ 一句话总结

本文提出了一种名为Wan-Image的统一视觉生成系统,通过融合大语言模型的认知能力与扩散Transformer的高保真像素合成,并借助大规模多模态数据训练和精细标注,实现了从普通图像生成到专业级图像创作工具的跨越,解决了复杂文字渲染、多主体身份保持、精确编辑等关键难题。

源自 arXiv: 2604.19858