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AssetDropper: Asset Extraction via Diffusion Models with Reward-Driven Optimization

6 June 2025
Lanjiong Li
Guanhua Zhao
Lingting Zhu
Zeyu Cai
Lequan Yu
Jian Zhang
Zeyu Wang
ArXiv (abs)PDFHTML
Main:7 Pages
12 Figures
Bibliography:3 Pages
1 Tables
Appendix:1 Pages
Abstract

Recent research on generative models has primarily focused on creating product-ready visual outputs; however, designers often favor access to standardized asset libraries, a domain that has yet to be significantly enhanced by generative capabilities. Although open-world scenes provide ample raw materials for designers, efficiently extracting high-quality, standardized assets remains a challenge. To address this, we introduce AssetDropper, the first framework designed to extract assets from reference images, providing artists with an open-world asset palette. Our model adeptly extracts a front view of selected subjects from input images, effectively handling complex scenarios such as perspective distortion and subject occlusion. We establish a synthetic dataset of more than 200,000 image-subject pairs and a real-world benchmark with thousands more for evaluation, facilitating the exploration of future research in downstream tasks. Furthermore, to ensure precise asset extraction that aligns well with the image prompts, we employ a pre-trained reward model to fulfill a closed-loop with feedback. We design the reward model to perform an inverse task that pastes the extracted assets back into the reference sources, which assists training with additional consistency and mitigates hallucination. Extensive experiments show that, with the aid of reward-driven optimization, AssetDropper achieves the state-of-the-art results in asset extraction. Project page:this http URL.

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@article{li2025_2506.07738,
  title={ AssetDropper: Asset Extraction via Diffusion Models with Reward-Driven Optimization },
  author={ Lanjiong Li and Guanhua Zhao and Lingting Zhu and Zeyu Cai and Lequan Yu and Jian Zhang and Zeyu Wang },
  journal={arXiv preprint arXiv:2506.07738},
  year={ 2025 }
}
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