OpenSVBRDF:空间变化反射率测量数据库

Xiaohe Ma, Xianmin Xu, Leyao Zhang, Kun Zhou, Hongzhi Wu
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摘要

我们提出了第一个测量空间变化各向异性反射率的大规模数据库,由1000个高质量的近平面svbrdf组成,涵盖木材、织物和金属等9种材料类别。每个样本在15分钟内被捕获,并表示为一组高分辨率纹理图,这些纹理图对应于空间变化的BRDF参数和局部帧。为了建立这个数据库,我们开发了一个新的集成系统,用于鲁棒、高质量和高效率的反射率采集和重建。我们的设置由2个摄像头和16,384个led组成。我们训练了64种照明模式,以进行有效的采集,并结合一个网络,该网络通过在模式下捕获的仔细对齐的双视图测量来预测神经表示中的每点反射率。中间结果对在63个有效线性光下获得的照片进行进一步微调,最终拟合到BRDF模型。我们报告了数据库的各种统计数据,并展示了它在材料生成、分类和抽样方面的应用价值。所有相关数据,包括将来添加到数据库的内容,都可以从https://opensvbrdf.github.io/下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OpenSVBRDF: A Database of Measured Spatially-Varying Reflectance
We present the first large-scale database of measured spatially-varying anisotropic reflectance, consisting of 1,000 high-quality near-planar SVBRDFs, spanning 9 material categories such as wood, fabric and metal. Each sample is captured in 15 minutes, and represented as a set of high-resolution texture maps that correspond to spatially-varying BRDF parameters and local frames. To build this database, we develop a novel integrated system for robust, high-quality and -efficiency reflectance acquisition and reconstruction. Our setup consists of 2 cameras and 16,384 LEDs. We train 64 lighting patterns for efficient acquisition, in conjunction with a network that predicts per-point reflectance in a neural representation from carefully aligned two-view measurements captured under the patterns. The intermediate results are further fine-tuned with respect to the photographs acquired under 63 effective linear lights, and finally fitted to a BRDF model. We report various statistics of the database, and demonstrate its value in the applications of material generation, classification as well as sampling. All related data, including future additions to the database, can be downloaded from https://opensvbrdf.github.io/.
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