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ePBR: Extended PBR Materials in Image Synthesis

23 April 2025
Yu Guo
Zhiqiang Lao
Xiyun Song
Yubin Zhou
Zongfang Lin
Heather Yu
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Abstract

Realistic indoor or outdoor image synthesis is a core challenge in computer vision and graphics. The learning-based approach is easy to use but lacks physical consistency, while traditional Physically Based Rendering (PBR) offers high realism but is computationally expensive. Intrinsic image representation offers a well-balanced trade-off, decomposing images into fundamental components (intrinsic channels) such as geometry, materials, and illumination for controllable synthesis. However, existing PBR materials struggle with complex surface models, particularly high-specular and transparent surfaces. In this work, we extend intrinsic image representations to incorporate both reflection and transmission properties, enabling the synthesis of transparent materials such as glass and windows. We propose an explicit intrinsic compositing framework that provides deterministic, interpretable image synthesis. With the Extended PBR (ePBR) Materials, we can effectively edit the materials with precise controls.

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@article{guo2025_2504.17062,
  title={ ePBR: Extended PBR Materials in Image Synthesis },
  author={ Yu Guo and Zhiqiang Lao and Xiyun Song and Yubin Zhou and Zongfang Lin and Heather Yu },
  journal={arXiv preprint arXiv:2504.17062},
  year={ 2025 }
}
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