Unsupervised Learning of Geometry with Edge-aware Depth-Normal Consistency
November 10, 2017 Β· Declared Dead Β· π AAAI Conference on Artificial Intelligence
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Authors
Zhenheng Yang, Peng Wang, Wei Xu, Liang Zhao, Ramakant Nevatia
arXiv ID
1711.03665
Category
cs.CV: Computer Vision
Citations
165
Venue
AAAI Conference on Artificial Intelligence
Last Checked
4 months ago
Abstract
Learning to reconstruct depths in a single image by watching unlabeled videos via deep convolutional network (DCN) is attracting significant attention in recent years. In this paper, we introduce a surface normal representation for unsupervised depth estimation framework. Our estimated depths are constrained to be compatible with predicted normals, yielding more robust geometry results. Specifically, we formulate an edge-aware depth-normal consistency term, and solve it by constructing a depth-to-normal layer and a normal-to-depth layer inside of the DCN. The depth-to-normal layer takes estimated depths as input, and computes normal directions using cross production based on neighboring pixels. Then given the estimated normals, the normal-to-depth layer outputs a regularized depth map through local planar smoothness. Both layers are computed with awareness of edges inside the image to help address the issue of depth/normal discontinuity and preserve sharp edges. Finally, to train the network, we apply the photometric error and gradient smoothness for both depth and normal predictions. We conducted experiments on both outdoor (KITTI) and indoor (NYUv2) datasets, and show that our algorithm vastly outperforms state of the art, which demonstrates the benefits from our approach.
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