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A neural network approach to photometric stereo inversion of real-world reflectance maps for extracting 3-D shapes of objects

机译:神经网络方法对真实世界反射率图进行光度学立体反演,以提取物体的3D形状

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摘要

Presents a neural network approach to the problem of photometric stereo inversion of the reflectance maps of real-world objects for the purpose of estimating the 3-D attitudes of the surface patches of objects. As in the photometric stereo approach, here also the observation that there is a one-to-one mapping between the n-tuples of the photometric stereo image intensities and the orientations of the surface normals is valid. A multilayered feedforward neural network with backpropagation training algorithm is used as dimensionality reducer to effectively encode this mapping by associating the two components of surface normals to the observed intensities from three photometric stereo images of the underlying surface patches. The training patterns are sampled from the images of a Gaussian sphere of average reflectance containing both diffuse and specular components. The neural network thus trained has been tested on images of real-world objects with different shapes and reflectance properties. Using the surface normals estimated by the neural network, 3-D shapes of the objects have been reconstructed to a good approximation.
机译:提出了一种神经网络方法来解决现实对象反射率图的光度学立体反演问题,目的是估计对象表面斑块的3-D姿态。像在光度立体方法中一样,在这里也观察到在光度立体图像强度的n个元组和表面法线的方向之间存在一对一的映射是有效的。带有前向传播训练算法的多层前馈神经网络被用作降维器,通过将表面法线的两个分量与来自下层表面斑块的三个光度立体图像中观察到的强度相关联,来有效地编码此映射。从包含漫反射和镜面反射分量的平均反射率高斯球的图像中采样训练模式。如此训练的神经网络已经在具有不同形状和反射特性的真实对象的图像上进行了测试。使用由神经网络估计的表面法线,已将对象的3D形状重建为近似值。

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