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Surface Normals in the Wild

10 April 2017
Weifeng Chen
Donglai Xiang
Jia Deng
    3DH
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Abstract

We study the problem of single-image depth estimation for images in the wild. We collect human annotated surface normals and use them to train a neural network that directly predicts pixel-wise depth. We propose two novel loss functions for training with surface normal annotations. Experiments on NYU Depth and our own dataset demonstrate that our approach can significantly improve the quality of depth estimation in the wild.

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