资源论文Neural Inverse Rendering for General Reflectance Photometric Stereo

Neural Inverse Rendering for General Reflectance Photometric Stereo

2020-03-19 | |  48 |   42 |   0

Abstract

We present a novel convolutional neural network architecture for photometric stereo (Woodham, 1980), a problem of recovering 3D object surface normals from multiple images observed under varying illuminations. Despite its long history in computer vision, the problem still shows fundamental challenges for surfaces with unknown general reflectance properties (BRDFs). Leveraging deep neural networks to learn complicated reflectance models is promising, but studies in th direction are very limited due to difficulties in quiring accurate ground truth for training and als in designing networks invariant to permutation of input images. In order to address these challenges we propose a physics based unsupervised learning framework where surface normals and BRDFs are predicted by the network and fed into the rendering equation to synthesize observed images. The network weights are optimized during testing by minimizing reconstruction loss between observed and synthesized images. Thus, our learning process does not require ground truth normals or even pre-training on external images. Our method is shown to achieve the state-of-the-art performance on a challenging real-world scene benchmark.

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