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Full Hierarchic Versus Non-Hierarchic Classification Approaches for Mapping Sealed Surfaces at the Rural-Urban Fringe Using High-Resolution Satellite Data

机译:利用高分辨率卫星数据绘制城乡边缘密封面的完整分层与非分层分类方法

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摘要

Since 2008 more than half of the world population is living in cities and urban sprawl is continuing. Because of these developments, the mapping and monitoring of urban environments and their surroundings is becoming increasingly important. In this study two object-oriented approaches for high-resolution mapping of sealed surfaces are compared: a standard non-hierarchic approach and a full hierarchic approach using both multi-layer perceptrons and decision trees as learning algorithms. Both methods outperform the standard nearest neighbour classifier, which is used as a benchmark scenario. For the multi-layer perceptron approach, applying a hierarchic classification strategy substantially increases the accuracy of the classification. For the decision tree approach a one-against-all hierarchic classification strategy does not lead to an improvement of classification accuracy compared to the standard all-against-all approach. Best results are obtained with the hierarchic multi-layer perceptron classification strategy, producing a kappa value of 0.77. A simple shadow reclassification procedure based on characteristics of neighbouring objects further increases the kappa value to 0.84.
机译:自2008年以来,全球一半以上的人口居住在城市,城市蔓延仍在继续。由于这些发展,对城市环境及其周围环境的制图和监视变得越来越重要。在这项研究中,比较了两种用于密封表面的高分辨率映射的面向对象的方法:标准非分层方法和使用多层感知器和决策树作为学习算法的完整分层方法。两种方法均优于标准最近邻分类器,该分类器用作基准方案。对于多层感知器方法,应用分层分类策略可大大提高分类的准确性。对于决策树方法,与标准的全对抗所有方法相比,全对抗的分层分类策略不会导致分类准确性的提高。使用分层多层感知器分类策略可获得最佳结果,得出的kappa值为0.77。基于相邻对象特征的简单阴影重分类过程会将kappa值进一步提高到0.84。

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