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首页> 外文期刊>Journal of Wind Engineering and Industrial Aerodynamics: The Journal of the International Association for Wind Engineering >Cyclone damage detection on building structures from pre- and post-satellite images using wavelet based pattern recognition
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Cyclone damage detection on building structures from pre- and post-satellite images using wavelet based pattern recognition

机译:使用基于小波的模式识别从卫星前后图像对建筑结构进行旋风损伤检测

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The majority of building structural losses during the past few decades has been due to wind induced damage, especially tropical cyclone damages. Rapid identification of damage locations as well as damaged buildings, and appropriate maintenance, can diminish the impact of such natural disasters. This paper describes detection of damage to cyclone-prone building roof structures from pre- and post-storm satellite images of the shores of Punta Gorda before and after the Hurricane 'Charley' 2004 disaster using a wavelet-based change detection method. Damaged buildings are automatically identified using wavelet-extracted statistical features and by edge detection, and classification using Artificial Neural Network (ANN) and Support Vector Machine (SVM). A comparison analysis is then carried out by comparing these results with results obtained using conventional change detection methods. It is observed that the wavelet-based change detection method yields identification information of damaged buildings superior to that obtained using conventional methods. In this work, the percentage of the damaged area of each damaged building is also calculated by a newly introduced texture-wavelet analysis on roof-tops, and the results are validated by counting the damage pixels manually. A positive increase in the extracted statistical features is observed as the percentage area of damage increases, which adds to the accuracy of the identification method. (C) 2014 Elsevier Ltd. All rights reserved.
机译:在过去的几十年中,大多数建筑结构损失是由于风引起的破坏,尤其是热带气旋破坏。快速识别损坏的位置以及损坏的建筑物,并进行适当的维护,可以减少此类自然灾害的影响。本文描述了使用基于小波的变化检测方法,从2004年飓风“查理”灾难发生之前和之后的蓬塔戈尔达海岸风暴前和灾后卫星图像中,检测旋风易生建筑物屋顶结构的损坏。使用小波提取的统计特征并通过边缘检测自动识别损坏的建筑物,并使用人工神经网络(ANN)和支持向量机(SVM)进行分类。然后,通过将这些结果与使用常规变化检测方法获得的结果进行比较,进行比较分析。可以看出,基于小波的变化检测方法所产生的受损建筑物的识别信息要优于使用常规方法获得的信息。在这项工作中,还通过新引入的屋顶纹理小波分析来计算每座受损建筑物受损面积的百分比,并通过手动计算受损像素来验证结果。随着损坏百分比的增加,提取的统计特征会出现正向增加,这增加了识别方法的准确性。 (C)2014 Elsevier Ltd.保留所有权利。

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