MetaLayer: A Meta-Learned BSDF Model for Layered Materials

渲染(计算机图形) 计算机科学 代表(政治) 人工神经网络 计算 计算机图形学 绘图 编码(内存) 编码 航程(航空) 人工智能 算法 计算机图形学(图像) 工程类 基因 法学 化学 航空航天工程 政治 生物化学 政治学
作者
Jie Guo,Zeru Li,Xue‐Yan He,Beibei Wang,Wenbin Li,Yanwen Guo,Ling‐Qi Yan
出处
期刊:ACM Transactions on Graphics [Association for Computing Machinery]
卷期号:42 (6): 1-15 被引量:3
标识
DOI:10.1145/3618365
摘要

Reproducing the appearance of arbitrary layered materials has long been a critical challenge in computer graphics, with regard to the demanding requirements of both physical accuracy and low computation cost. Recent studies have demonstrated promising results by learning-based representations that implicitly encode the appearance of complex (layered) materials by neural networks. However, existing generally-learned models often struggle between strong representation ability and high runtime performance, and also lack physical parameters for material editing. To address these concerns, we introduce MetaLayer , a new methodology leveraging meta-learning for modeling and rendering layered materials. MetaLayer contains two networks: a BSDFNet that compactly encodes layered materials into implicit neural representations, and a MetaNet that establishes the mapping between the physical parameters of each material and the weights of its corresponding implicit neural representation. A new positional encoding method and a well-designed training strategy are employed to improve the performance and quality of the neural model. As a new learning-based representation, the proposed MetaLayer model provides both fast responses to material editing and high-quality results for a wide range of layered materials, outperforming existing layered BSDF models.
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