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GeoEye-1 and WorldView-2 pan-sharpened imagery for object-based classification in urban environments

机译:GeoEye-1和WorldView-2全景图像可用于城市环境中的基于对象的分类

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摘要

The latest breed of very high resolution (VHR) commercial satellites opens new possibilities for cartographic and remote-sensing applications. In fact, one of the most common applications of remote-sensing images is the extraction of land-cover information for digital image base maps by means of classification techniques. The aim of the study was to compare the potential classification accuracy provided by pan-sharpened orthoimages from both GeoEye-1 and WorldView-2 (WV2) VHR satellites over urban environments. The influence on the supervised classification accuracy was evaluated by means of an object-based statistical analysis regarding three main factors: (i) sensor used; (ii) sets of image object (IO) features used for classification considering spectral, geometry, texture, and elevation features; and (iii) size of training samples to feed the classifier (nearest neighbour (NN)). The new spectral bands of WV2 (Coastal, Yellow, Red Edge, and Near Infrared-2) did not improve the benchmark established from GeoEye-1. The best overall accuracy for GeoEye-1 (close to 89%) was attained by using together spectral and elevation features, whereas the highest overall accuracy for WV2 (83%) was achieved by adding textural features to the previous ones. In the case of buildings classification, the normalized digital surface model computed from light detection and ranging data was the most valuable feature, achieving producer's and user's accuracies close to 95% and 91% for GeoEye-1 and VW2, respectively. Last but not least and regarding the size of the training samples, the rule of 'the larger the better' was true but, based on statistical analysis, the ideal choice would be variable depending on both each satellite and target class. In short, 20 training IOs per class would be enough if the NN classifier was applied on pan-sharpened orthoimages from both GeoEye-1 and WV2.
机译:最新种类的超高分辨率(VHR)商业卫星为制图和遥感应用开辟了新的可能性。实际上,遥感图像的最常见应用之一是借助分类技术为数字图像底图提取土地覆盖信息。这项研究的目的是比较城市环境中GeoEye-1和WorldView-2(WV2)VHR卫星的全锐化正射影像提供的潜在分类精度。通过对三个主要因素的基于对象的统计分析来评估对监督分类准确性的影响:(i)使用传感器; (ii)考虑光谱,几何,纹理和高程特征进行分类的一组图像对象(IO)特征; (iii)用于分类器的训练样本的大小(最近邻(NN))。 WV2的新光谱带(沿海,黄色,红色边缘和近红外2)没有改善GeoEye-1建立的基准。通过同时使用光谱和高程特征,可以实现GeoEye-1的最佳总体精度(接近89%),而通过将纹理特征添加到以前的特征中,可以实现WV2的最高总体精度(83%)。对于建筑物分类,从光检测和测距数据计算出的归一化数字表面模型是最有价值的功能,对于GeoEye-1和VW2,生产者和用户的准确度分别接近95%和91%。最后但并非最不重要的一点是,关于训练样本的大小,“越大越好”的规则是正确的,但是基于统计分析,理想的选择将取决于每个卫星和目标类别。简而言之,如果将NN分类器应用于来自GeoEye-1和WV2的泛锐化正射影像,则每个班级20个训练IO就足够了。

著录项

  • 来源
    《International journal of remote sensing》 |2013年第8期|2583-2606|共24页
  • 作者单位

    Departamento de Ingenieria Rural, University of Almeria, Escuela Superior de Ingenieria, 04120 Almeria, Spain;

    Departamento de Ingenieria Rural, University of Almeria, Escuela Superior de Ingenieria, 04120 Almeria, Spain;

    Departamento de Ingenieria Rural, University of Almeria, Escuela Superior de Ingenieria, 04120 Almeria, Spain;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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