A three-layered approach to facade parsing

COMPUTER VISION - ECCV 2012, PT VII(2012)

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摘要
We propose a novel three-layered approach for semantic segmentation of building facades. In the first layer, starting from an oversegmentation of a facade, we employ the recently introduced machine learning technique Recursive Neural Networks (RNN) to obtain a probabilistic interpretation of each segment. In the second layer, initial labeling is augmented with the information coming from specialized facade component detectors. The information is merged using a Markov Random Field. In the third layer, we introduce weak architectural knowledge, which enforces the final reconstruction to be architecturally plausible and consistent. Rigorous tests performed on two existing datasets of building facades demonstrate that we significantly outperform the current-state of the art, even when using outputs from earlier layers of the pipeline. Also, we show how the final output of the third layer can be used to create a procedural reconstruction.
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关键词
rigorous test,specialized facade component detector,final output,existing datasets,markov random field,probabilistic interpretation,facade parsing,earlier layer,novel three-layered approach,final reconstruction,procedural reconstruction
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