首页> 外文会议>Intelligent Systems Design and Applications, 2009. ISDA '09 >A Comparative Study of Clustering Methods for Urban Areas Segmentation from High Resolution Remote Sensing Image
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A Comparative Study of Clustering Methods for Urban Areas Segmentation from High Resolution Remote Sensing Image

机译:基于高分辨率遥感影像的城市区域聚类方法比较研究

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This paper focuses on evaluating and comparing a number of clustering methods used in color image segmentation of high resolution remote sensing images. Despite the enormous progress in the analysis of remote sensing imagery over the past three decades, there is a lack of guidance on how to select an image segmentation method suitable for the image type and size. Clustering has been widely used as a segmentation approach therefore, choosing an appropriate clustering method is very critical to achieve better results. In this paper we compare five clustering methods that have been suggested for segmentation of images. We focus on segmentation of urban areas in high resolution remote sensing images. Effective clustering extracts regions which correspond to land uses in urban areas. Ground truth images are used to evaluate the performance of clustering methods. The comparison shows that the average accuracy of road extraction is above 75%. The results show the potential of clustering high resolution aerial images starting from the three RGB bands only. The comparison gives some guidance and tradeoffs involved in using each.
机译:本文着重评估和比较用于高分辨率遥感影像彩色图像分割的多种聚类方法。尽管在过去的三十年中,遥感影像的分析取得了巨大进展,但仍缺乏有关如何选择适合影像类型和尺寸的影像分割方法的指导。聚类已被广泛用作分割方法,因此,选择合适的聚类方法对于获得更好的结果非常关键。在本文中,我们比较了建议用于图像分割的五种聚类方法。我们专注于高分辨率遥感影像中的城市区域分割。有效的聚类可以提取与城市土地用途相对应的区域。地面真相图像用于评估聚类方法的性能。比较表明,道路提取的平均准确率在75%以上。结果表明,仅从三个RGB波段开始聚类高分辨率航拍图像的潜力。比较结果提供了一些指导和使用时的权衡。

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