Detecting Vanishing Points using Global Image Context in a Non-Manhattan World

CVPR 2016  ·  Menghua Zhai, Scott Workman, Nathan Jacobs ·

We propose a novel method for detecting horizontal vanishing points and the zenith vanishing point in man-made environments. The dominant trend in existing methods is to first find candidate vanishing points, then remove outliers by enforcing mutual orthogonality. Our method reverses this process: we propose a set of horizon line candidates and score each based on the vanishing points it contains. A key element of our approach is the use of global image context, extracted with a deep convolutional network, to constrain the set of candidates under consideration. Our method does not make a Manhattan-world assumption and can operate effectively on scenes with only a single horizontal vanishing point. We evaluate our approach on three benchmark datasets and achieve state-of-the-art performance on each. In addition, our approach is significantly faster than the previous best method.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Horizon Line Estimation Eurasian Cities Dataset CNN+FULL AUC (horizon error) 90.80 # 2
Horizon Line Estimation Horizon Lines in the Wild CNN+FULL AUC (horizon error) 58.24 # 3
Horizon Line Estimation York Urban Dataset CNN+FULL AUC (horizon error) 94.78 # 2

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