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PairHuman: A High-Fidelity Photographic Dataset for Customized Dual-Person Generation

2025-11-20 08:56:46
Ting Pan, Ye Wang, Peiguang Jing, Rui Ma, Zili Yi, Yu Liu

Abstract

Personalized dual-person portrait customization has considerable potential applications, such as preserving emotional memories and facilitating wedding photography planning. However, the absence of a benchmark dataset hinders the pursuit of high-quality customization in dual-person portrait generation. In this paper, we propose the PairHuman dataset, which is the first large-scale benchmark dataset specifically designed for generating dual-person portraits that meet high photographic standards. The PairHuman dataset contains more than 100K images that capture a variety of scenes, attire, and dual-person interactions, along with rich metadata, including detailed image descriptions, person localization, human keypoints, and attribute tags. We also introduce DHumanDiff, which is a baseline specifically crafted for dual-person portrait generation that features enhanced facial consistency and simultaneously balances in personalized person generation and semantic-driven scene creation. Finally, the experimental results demonstrate that our dataset and method produce highly customized portraits with superior visual quality that are tailored to human preferences. Our dataset is publicly available at this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2511.16712

PDF

https://arxiv.org/pdf/2511.16712.pdf


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