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MaRI: Material Retrieval Integration across Domains

11 March 2025
Jianhui Wang
Zhifei Yang
Yangfan He
Huixiong Zhang
Yuxuan Chen
Jingwei Huang
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Abstract

Accurate material retrieval is critical for creating realistic 3D assets. Existing methods rely on datasets that capture shape-invariant and lighting-varied representations of materials, which are scarce and face challenges due to limited diversity and inadequate real-world generalization. Most current approaches adopt traditional image search techniques. They fall short in capturing the unique properties of material spaces, leading to suboptimal performance in retrieval tasks. Addressing these challenges, we introduce MaRI, a framework designed to bridge the feature space gap between synthetic and real-world materials. MaRI constructs a shared embedding space that harmonizes visual and material attributes through a contrastive learning strategy by jointly training an image and a material encoder, bringing similar materials and images closer while separating dissimilar pairs within the feature space. To support this, we construct a comprehensive dataset comprising high-quality synthetic materials rendered with controlled shape variations and diverse lighting conditions, along with real-world materials processed and standardized using material transfer techniques. Extensive experiments demonstrate the superior performance, accuracy, and generalization capabilities of MaRI across diverse and complex material retrieval tasks, outperforming existing methods.

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@article{wang2025_2503.08111,
  title={ MaRI: Material Retrieval Integration across Domains },
  author={ Jianhui Wang and Zhifei Yang and Yangfan He and Huixiong Zhang and Yuxuan Chen and Jingwei Huang },
  journal={arXiv preprint arXiv:2503.08111},
  year={ 2025 }
}
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