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Main Authors: Xu, Zitong, Shen, Dake, Du, Yaosong, Hao, Kexiang, Huang, Jinghan, Huang, Xiande
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.18352
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author Xu, Zitong
Shen, Dake
Du, Yaosong
Hao, Kexiang
Huang, Jinghan
Huang, Xiande
author_facet Xu, Zitong
Shen, Dake
Du, Yaosong
Hao, Kexiang
Huang, Jinghan
Huang, Xiande
contents Recent advances in AIGC (Artificial Intelligence Generated Content) models have enabled significant progress in image and video generation. However, users still struggle to obtain content that aligns with their preferences due to the difficulty of crafting detailed prompts and the lack of mechanisms to retain their preferences. To address these challenges, we construct \textbf{UniPrefer-100K}, a large-scale dataset comprising images, videos, and associated text that describes the styles users tend to prefer. Based on UniPrefer-100K, we propose \textbf{MagicWand}, a universal generation and evaluation agent that enhances prompts based on user preferences, leverages advanced generation models for high-quality content, and applies preference-aligned evaluation and refinement. In addition, we introduce \textbf{UniPreferBench}, the first large-scale benchmark with over 120K annotations for assessing user preference alignment across diverse AIGC tasks. Experiments on UniPreferBench demonstrate that MagicWand consistently generates content and evaluations that are well aligned with user preferences across a wide range of scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2511_18352
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MagicWand: A Universal Agent for Generation and Evaluation Aligned with User Preference
Xu, Zitong
Shen, Dake
Du, Yaosong
Hao, Kexiang
Huang, Jinghan
Huang, Xiande
Computer Vision and Pattern Recognition
Recent advances in AIGC (Artificial Intelligence Generated Content) models have enabled significant progress in image and video generation. However, users still struggle to obtain content that aligns with their preferences due to the difficulty of crafting detailed prompts and the lack of mechanisms to retain their preferences. To address these challenges, we construct \textbf{UniPrefer-100K}, a large-scale dataset comprising images, videos, and associated text that describes the styles users tend to prefer. Based on UniPrefer-100K, we propose \textbf{MagicWand}, a universal generation and evaluation agent that enhances prompts based on user preferences, leverages advanced generation models for high-quality content, and applies preference-aligned evaluation and refinement. In addition, we introduce \textbf{UniPreferBench}, the first large-scale benchmark with over 120K annotations for assessing user preference alignment across diverse AIGC tasks. Experiments on UniPreferBench demonstrate that MagicWand consistently generates content and evaluations that are well aligned with user preferences across a wide range of scenarios.
title MagicWand: A Universal Agent for Generation and Evaluation Aligned with User Preference
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.18352