Learning to Reconstruct 3D Manhattan Wireframes From a Single Image

Yichao Zhou(Adobe Systems (United States)), Haozhi Qi(University of California, Berkeley), Yuexiang Zhai(University of California, Berkeley), Qi Sun(Adobe Systems (United States)), Zhili Chen(Adobe Systems (United States)), Li‐Yi Wei(Adobe Systems (United States)), Yi Ma(Berkeley College)
Unknown
October 1, 2019
Cited by 76

Abstract

From a single view of an urban environment, we propose a method to effectively exploit the global structural regularities for obtaining a compact, accurate, and intuitive 3D wireframe representation. Our method trains a single convolutional neural network to simultaneously detect salient junctions and straight lines, as well as predict their 3D depth and vanishing points. Compared with state-of-the-art learning-based wireframe detection methods, our network is much simpler and more unified, leading to better 2D wireframe detection. With a global structural prior (such as Manhattan assumption), our method further reconstructs a full 3D wireframe model, a compact vector representation suitable for a variety of high-level vision tasks such as AR and CAD. We conduct extensive evaluations of our method on a large new synthetic dataset of urban scenes as well as real images. Our code and datasets will be published along with the paper.


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