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Autori principali: Zhu, Zihao, Huang, Kuan-Ru, Xu, Zhaoming, Li, Renjie, Wu, Bo, Bai, Ruizheng, Wu, Mingyang, Paul, Sayak, Tu, Zhengzhong
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.24762
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author Zhu, Zihao
Huang, Kuan-Ru
Xu, Zhaoming
Li, Renjie
Wu, Bo
Bai, Ruizheng
Wu, Mingyang
Paul, Sayak
Tu, Zhengzhong
author_facet Zhu, Zihao
Huang, Kuan-Ru
Xu, Zhaoming
Li, Renjie
Wu, Bo
Bai, Ruizheng
Wu, Mingyang
Paul, Sayak
Tu, Zhengzhong
contents High-resolution datasets are essential for advancing super-resolution (SR) and text-to-image (T2I) diffusion research. However, current publicly available datasets lack both the native 4K resolution and the extensive scale necessary for training state-of-the-art models. To address this gap, we introduce a 4K Large Scale Dataset and Benchmark (4KLSDB), a large-scale, diverse dataset consisting of 129,484 carefully curated 4K resolution images spanning multiple categories such as nature, urban scenes, people, food, artwork, and CGI, alongside distinct validation and test sets containing 2,000 and 1,984 images respectively. Images were sourced from established open datasets including Photo Concept Bucket, Laion2B, and PD12M. 4KLSDB underwent rigorous multi-stage automated filtering and annotation pipelines involving both human annotators and Large Multimodal Models (LMMs) to ensure high aesthetic quality and dataset consistency. We demonstrate 4KLSDB's effectiveness by training representative super-resolution and diffusion models, observing significant improvements in performance on native 4K benchmarks. Comprehensive experiments illustrate a positive correlation between training on true 4K resolution data and improved fidelity in image restoration task, especially on 4K resolution. We provide the research community a valuable resource to drive progress toward genuinely high-fidelity image synthesis and restoration by providing 4KLSDB. Our project page is available at: https://4klsdb.github.io/.
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle 4KLSDB: A Large-Scale Dataset for 4K Image Restoration and Generation
Zhu, Zihao
Huang, Kuan-Ru
Xu, Zhaoming
Li, Renjie
Wu, Bo
Bai, Ruizheng
Wu, Mingyang
Paul, Sayak
Tu, Zhengzhong
Computer Vision and Pattern Recognition
High-resolution datasets are essential for advancing super-resolution (SR) and text-to-image (T2I) diffusion research. However, current publicly available datasets lack both the native 4K resolution and the extensive scale necessary for training state-of-the-art models. To address this gap, we introduce a 4K Large Scale Dataset and Benchmark (4KLSDB), a large-scale, diverse dataset consisting of 129,484 carefully curated 4K resolution images spanning multiple categories such as nature, urban scenes, people, food, artwork, and CGI, alongside distinct validation and test sets containing 2,000 and 1,984 images respectively. Images were sourced from established open datasets including Photo Concept Bucket, Laion2B, and PD12M. 4KLSDB underwent rigorous multi-stage automated filtering and annotation pipelines involving both human annotators and Large Multimodal Models (LMMs) to ensure high aesthetic quality and dataset consistency. We demonstrate 4KLSDB's effectiveness by training representative super-resolution and diffusion models, observing significant improvements in performance on native 4K benchmarks. Comprehensive experiments illustrate a positive correlation between training on true 4K resolution data and improved fidelity in image restoration task, especially on 4K resolution. We provide the research community a valuable resource to drive progress toward genuinely high-fidelity image synthesis and restoration by providing 4KLSDB. Our project page is available at: https://4klsdb.github.io/.
title 4KLSDB: A Large-Scale Dataset for 4K Image Restoration and Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.24762