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We propose a new approach for semantic segmentation of 3D city models. Starting from an SfM reconstruction of a street-side scene, we perform classification and facade splitting purely in 3D, obviating the need for slow image-based semantic segmentation methods. We show that a properly trained pure-3D approach produces high quality labelings, with significant speed benefits (20x faster) allowing us to analyze entire streets in a matter of minutes. Additionally, if speed is not of the essence, the 3D labeling can be combined with the results of a state-of-the-art 2D classifier, further boosting the performance. Further, we propose a novel facade separation based on semantic nuances between facades. Finally, inspired by the use of architectural principles for 2D facade labeling, we propose new 3D-specific principles and an efficient optimization scheme based on an integer quadratic programming formulation.
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Anđelo Martinović
KU Leuven
Jan Knopp
Hayko Riemenschneider
ETH Zurich
KU Leuven
ETH Zurich
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Martinović et al. (Mon,) studied this question.
synapsesocial.com/papers/6a0964f900217ed3fb33f384 — DOI: https://doi.org/10.1109/cvpr.2015.7299075