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BRDF Estimation of Complex Materials with Nested Learning

机译:嵌套学习的复杂材料的BRDF估计

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The estimation of the optical properties of a material from RGB-images is an important but extremely ill-posed problem in Computer Graphics. While recent works have successfully approached this problem even from just a single photograph, significant simplifications of the material model are assumed, limiting the usability of such methods. The detection of complex material properties such as anisotropy or Fresnel effect remains an unsolved challenge. We propose a novel method that predicts the model parameters of an artist-friendly, physically-based BRDF, from only two low-resolution shots of the material. Thanks to a novel combination of deep neural networks in a nested architecture, we are able to handle the ambiguities given by the non-orthogonality and non-convexity of the parameter space. To train the network, we generate a novel dataset of physically-based synthetic images. We prove that our model can recover new properties like anisotropy, index of refraction and a second reflectance color, for materials that have tinted specular reflections or whose albedo changes at glancing angles.
机译:从RGB图像估计材料的光学特性是计算机图形学中一个重要但极为不适的问题。尽管最近的工作甚至仅从一张照片就已经成功地解决了这个问题,但是假设材料模型得到了显着简化,从而限制了这种方法的可用性。复杂材料特性(例如各向异性或菲涅耳效应)的检测仍然是一个尚未解决的挑战。我们提出了一种新颖的方法,该方法仅从材料的两个低分辨率镜头中预测艺术家友好的,基于物理的BRDF的模型参数。得益于嵌套结构中深度神经网络的新颖组合,我们能够处理参数空间的非正交性和非凸性所给出的歧义。为了训练网络,我们生成了一个新的基于物理的合成图像数据集。我们证明,对于有色镜面反射或反射率在掠射角度发生变化的材料,我们的模型可以恢复新的属性,如各向异性,折射率和第二种反射颜色。

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