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UltraImageGen: Efficient Ultra-High-Resolution Image Generation with Hierarchical Local Attention

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arxiv 2510.16325 v4 pith:JVYF24XJ submitted 2025-10-18 cs.CV

UltraImageGen: Efficient Ultra-High-Resolution Image Generation with Hierarchical Local Attention

classification cs.CV
keywords localattentiongenerationglobalultra-high-resolutionimageresolutionscomplexity
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Ultra-high-resolution text-to-image generation is increasingly vital for applications requiring fine-grained textures and global structural fidelity, yet state-of-the-art text-to-image diffusion models such as FLUX and SD3 remain confined to sub 2MP (< $1K\times2K$) resolutions due to the quadratic complexity of attention mechanisms and the scarcity of high-quality high-resolution training data. We present UltraImageGen, a novel framework that introduces hierarchical local attention with low-resolution global guidance, enabling efficient, scalable, and semantically coherent image synthesis at ultra-high resolutions. Specifically, high-resolution latents are divided into hardware aligned fixed-size local windows to reduce attention complexity from quadratic to near-linear, while a low-resolution latent equipped with scaled positional embeddings injects global semantics as an anchor. A lightweight LoRA adaptation bridges global and local pathways during denoising, ensuring consistency across structure and detail. To maximize inference efficiency and achieve scalable ultra-high-resolution generation, we repermute token sequence in window-first order, so that the GPU-friendly dense local blocks in attention calculation equals to the fixed-size local window in 2D regardless of resolution. Together ourwork reliably scales the pretrained model to resolutions higher than $8K$ with more than $10\times$ speed up and significantly lower memory usage. Extensive experiments demonstrate that ourwork achieves superior quality while maintaining computational efficiency, establishing a practical paradigm for advancing ultra-high-resolution image generation.

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  1. HierEdit: Region-Aware Hierarchical Diffusion for Efficient High-Resolution Editing

    cs.CV 2026-05 unverdicted novelty 6.0

    HierEdit enables efficient 4K image editing via low-resolution proxy localization followed by hierarchical local-window diffusion that reuses unaltered regions as conditioning.