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首页> 外文期刊>International journal of applied earth observation and geoinformation >Building extraction from high-resolution optical spaceborne images using the integration of support vector machine (SVM) classification, Hough transformation and perceptual grouping
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Building extraction from high-resolution optical spaceborne images using the integration of support vector machine (SVM) classification, Hough transformation and perceptual grouping

机译:使用支持向量机(SVM)分类,霍夫变换和感知分组的集成,从高分辨率光学星载图像中提取建筑物

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This paper presents an integrated approach for the automatic extraction of rectangular- and circular-shape buildings from high-resolution optical spaceborne images using the integration of support vector machine (SVM) classification, Hough transformation and perceptual grouping. The building patches are detected from the image using the binary SVM classification. The generated normalized digital surface model (nDSM) and the normalized difference vegetation index (NDVI) are incorporated in the classification process as additional bands. After detecting the building patches, the building boundaries are extracted through sequential processing of edge detection, Hough transformation and perceptual grouping. Those areas that are classified as building are masked and further processing operations are performed on the masked areas only. The edges of the buildings are detected through an edge detection algorithm that generates a binary edge image of the building patches. These edges are then converted into vector form through Hough transform and the buildings are constructed by means of perceptual grouping. To validate the developed method, experiments were conducted on pan-sharpened and panchromatic Ikonos imagery, covering the selected test areas in Batikent district of Ankara, Turkey. For the test areas that contain industrial buildings, the average building detection percentage (BDP) and quality percentage (QP) values were computed to be 93.45% and 79.51%, respectively. For the test areas that contain residential rectangular-shape buildings, the average BDP and QP values were computed to be 95.34% and 79.05%, respectively. For the test areas that contain residential circular-shape buildings, the average BDP and QP values were found to be 78.74% and 66.81%, respectively. (C) 2014 Elsevier B.V. All rights reserved.
机译:本文提出了一种集成方法,该方法使用支持向量机(SVM)分类,霍夫变换和感知分组的集成,从高分辨率光学星载图像中自动提取矩形和圆形建筑物。使用二进制SVM分类从图像中检测出建筑补丁。生成的归一化数字表面模型(nDSM)和归一化差异植被指数(NDVI)作为附加波段纳入分类过程。在检测到建筑物补丁之后,通过边缘检测,霍夫变换和感知分组的顺序处理来提取建筑物边界。那些被分类为建筑物的区域被遮罩,并且仅在遮罩的区域上执行进一步的处理操作。通过边缘检测算法检测建筑物的边缘,该算法生成建筑物补丁的二进制边缘图像。然后通过霍夫变换将这些边缘转换为矢量形式,并通过感知分组构造建筑物。为了验证所开发的方法,对全色和全色Ikonos影像进行了实验,覆盖了土耳其安卡拉Batikent区的选定测试区域。对于包含工业建筑物的测试区域,平均建筑物检测百分比(BDP)和质量百分比(QP)值分别计算为93.45%和79.51%。对于包含矩形住宅的测试区域,平均BDP和QP值分别计算为95.34%和79.05%。对于包含住宅圆形建筑物的测试区域,发现平均BDP和QP值分别为78.74%和66.81%。 (C)2014 Elsevier B.V.保留所有权利。

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