Robust Rooftop Extraction From Visible Band Images Using Higher Order CRF

Geoscience and Remote Sensing, IEEE Transactions  (2015)

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摘要
In this paper, we propose a robust framework for building extraction in visible band images. We first get an initial classification of the pixels based on an unsupervised presegmentation. Then, we develop a novel conditional random field (CRF) formulation to achieve accurate rooftops extraction, which incorporates pixel-level information and segment-level information for the identification of rooftops. Comparing with the commonly used CRF model, a higher order potential defined on segment is added in our model, by exploiting region consistency and shape feature at segment level. Our experiments show that the proposed higher order CRF model outperforms the state-of-the-art methods both at pixel and object levels on rooftops with complex structures and sizes in challenging environments.
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关键词
buildings (structures),feature extraction,geophysical image processing,image classification,image segmentation,random processes,remote sensing,crf formulation,accurate rooftop extraction,building extraction,complex structure rooftop,conditional random field,higher order crf,pixel classification,pixel-level information,robust rooftop extraction,rooftop identification,rooftop sizes,segment-level information,shape feature,visible band images,buildings,rooftops conditional random field (crf),shadows
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