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Detection of Urban Zones in Satellite Images using Visual Words

机译:使用视觉单词检测卫星图像中的城市区域

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Today, satellite and aerial images are the major source of information for landcover classification. An important usage of remotely sensed data is extracting urban regions to update GIS databases. However, in most cases human resources do not give a sufficient solution to the problem, since it can not entirely process such an enormous amount of remotely sensed data. In addition, most of the automatic methods for urban extraction that exist today are sensitive to atmospheric and radiometric parameters of the acquired image. In this paper we address the problem of urban areas extraction by using a visual representation concept known as "Bag of Words". This method, originally developed for text retrieval approaches, has been successfully applied to scenery image classification tasks. In this paper we introduce the "Bag of Words" approach into analysis of aerial and satellite images. Due to the fact that we implement a normalization process in our method, it is robust to changes in atmospheric conditions during acquisition time. The improved performance of the proposed method is demonstrated on IKONOS images. To assess the robustness of our method, the learning and testing procedures are performed on two different and independent images.
机译:如今,卫星和空中图像是土地层分类的主要信息来源。远程感测数据的重要用途是提取城市地区以更新GIS数据库。但是,在大多数情况下,人力资源没有给出足够的解决问题,因为它不能完全处理这种大量的远程感测数据。此外,今天存在的城市提取的大部分自动方法对所获得的图像的大气和辐射参数敏感。在本文中,我们通过使用称为“单词袋”的视觉表示概念来解决城市区域提取问题。此方法最初为文本检索方法开发,已成功应用于风景图像分类任务。在本文中,我们介绍了“袋子”方法,进入了空中和卫星图像的分析。由于我们在我们的方法中实施了归一化过程,因此在采集时间期间大气条件的变化是强大的。在IKONOS图像上证明了所提出的方法的改进性能。为了评估我们方法的稳健性,在两个不同和独立的图像上执行学习和测试程序。

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