Solving Well-posed Shape from Shading Problem Using Implicit Neural Representations

Wanxin Bao, Ren Komatsu, A. Yamashita, H. Asama
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引用次数: 1

Abstract

We propose a method for solving well-posed shape from shading problem by using implicit neural representations. We build an image irradiance equation and solve the equation by a sinusoidal representation network called SIREN, which is proposed by Sitzmann et al. in 2020. Object surface is expressed by Oren-Nayar model and a perspective projection model with light source located at the optical center is considered. Based on the above models, image irradiance equation is constructed, which is a partial differential equation (PDE). We introduce a neural network SIREN to solve this PDE, where implicit neural representations use the sine as a periodic activation function. Experiments are performed on three synthetic images and two real images. Results demonstrate that our proposed method performs with much higher accuracy.
利用隐式神经表征从阴影问题求解定姿形状
我们提出了一种利用隐式神经表征来解决良好定姿的阴影问题的方法。我们构建图像辐照度方程,并通过Sitzmann等人在2020年提出的正弦表示网络SIREN求解该方程。物体表面采用Oren-Nayar模型表示,考虑了光源位于光心的透视投影模型。基于上述模型,构造了图像辐照度方程,该方程为偏微分方程(PDE)。我们引入了一个神经网络SIREN来解决这个PDE,其中隐式神经表示使用正弦作为周期激活函数。在三幅合成图像和两幅真实图像上进行了实验。结果表明,该方法具有较高的精度。
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