Building Change Detection from Bi-Temporal Dense-Matching Point Clouds and Aerial Images

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ID: 114368
2018
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Abstract
In this work, a novel building change detection method from bi-temporal dense-matching point clouds and aerial images is proposed to address two major problems, namely, the robust acquisition of the changed objects above ground and the automatic classification of changed objects into buildings or non-buildings. For the acquisition of changed objects above ground, the change detection problem is converted into a binary classification, in which the changed area above ground is regarded as the foreground and the other area as the background. For the gridded points of each period, the graph cuts algorithm is adopted to classify the points into foreground and background, followed by the region-growing algorithm to form candidate changed building objects. A novel structural feature that was extracted from aerial images is constructed to classify the candidate changed building objects into buildings and non-buildings. The changed building objects are further classified as “newly built”, “taller”, “demolished”, and “lower” by combining the classification and the digital surface models of two periods. Finally, three typical areas from a large dataset are used to validate the proposed method. Numerous experiments demonstrate the effectiveness of the proposed algorithm.
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pang2018sensorsbuilding Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors Shiyan Pang;Xiangyun Hu;Zhongliang Cai;Jinqi Gong;Mi Zhang;Pang, Shiyan;Hu, Xiangyun;Cai, Zhongliang;Gong, Jinqi;Zhang, Mi;
Journal sensors
Year 2018
DOI 10.3390/s18040966
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