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Building Extraction from Remotely Sensed Images by Integrating Saliency Cue
Jul 24, 2017Author:
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Title: Building Extraction from Remotely Sensed Images by Integrating Saliency Cue

 Authors: Li, E; Xu, SB; Meng, WL; Zhang, XP

 Author Full Names: Li, Er; Xu, Shibiao; Meng, Weiliang; Zhang, Xiaopeng

 Source: IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 10 (3):906-919; 10.1109/JSTARS.2016.2603184 MAR 2017

 Language: English

 Abstract: In this paper, we propose a novel two-step building extraction method from remote sensing images by integrating saliency cue. We first utilize classical features such as shadow, color, and shape to find out initial building candidates. A fully connected conditional random field model is introduced in this step to ensure that most of the buildings are incorporated. While it is hard to further remove the mislabled rooftops from the building candidates by only using classical features, we adopt saliency cue as a new feature to determine whether there is a rooftop in each segmentation patch obtained from previous step. The basic idea behind the use of saliency information is that rooftops are more likely to attract visual attention than surrounding objects. Based on a specifically designed saliency estimation algorithm for building object, we extract saliency cue in the local region of each building candidate, which is integrated into a probabilistic model to get the final building extraction result. We show that the saliency cue can provide an efficient probabilistic indication of the presence of rooftops, which helps to reduce false positives while without increasing false negatives at the same time. Experimental results on two benchmark datasets highlight the advantages of the integration of saliency cue and demonstrate that the proposed method outperforms the stateof- the-art methods.

 ISSN: 1939-1404

 eISSN: 2151-1535

 IDS Number: EN2YL

 Unique ID: WOS:000395876100010

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