This paper deals with the highly challenging problem of reconstructing the shape of a refracting object from a single image of its resulting caustic. Due to the ubiquity of transparent refracting objects in everyday life, reconstruction of their shape entails a multitude of practical applications. The recent Shape from Caustics (SfC) method casts the problem as the inverse of a light propagation simulation for synthesis of the caustic image, that can be solved by a differentiable renderer. However, the inherent complexity of light transport through refracting surfaces currently limits the practicability with respect to reconstruction speed and robustness. To address these issues, we introduce Neural-Shape from Caustics (N-SfC), a learning-based extension that incorporates two components into the reconstruction pipeline: a denoising module, which alleviates the computational cost of the light transport simulation, and an optimization process based on learned gradient descent, which enables better convergence using fewer iterations. Extensive experiments demonstrate the effectiveness of our neural extensions in the scenario of quality control in 3D glass printing, where we significantly outperform the current state-of-the-art in terms of computational speed and final surface error.
翻译:本文论述从由此产生的腐蚀性单一图像中重建变形物体形状的极具挑战性的问题。由于透明的变形物体在日常生活中普遍存在,因此其形状的重建需要多种实际应用。最近,从腐蚀性(SfC)法的形状使问题倒过来,因为它是用于合成腐蚀性图像的光传播模拟的反面,而这种模拟可以通过一个不同的变形体来解决。然而,通过变形表面进行轻飘移的内在复杂性,目前限制了重建速度和坚固度的实用性。为了解决这些问题,我们引进了来自Caustics(N-SfC)的Neal-Shape(N-SfC),这是一个基于学习的扩展,将两个组成部分纳入重建管道中:一个脱色模块,可以减轻轻飘移模拟的计算成本,以及一个基于学习的梯度下沉的优化过程,能够使用较少的变相来更好地融合。广泛的实验表明,我们在3D玻璃印刷的质量控制情景中,神经延延延延是有效的,我们大大超越了目前地面速度的状态。