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An 'exclusion-inclusion' framework for extracting human settlements in rapidly developing regions of China from Landsat images

机译:从Landsat影像中提取中国快速发展地区的人类住区的“排除-包含”框架

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Satellite based human settlement extraction at medium resolution (30 m) with supervised classification has been widely carried out. However, adequate training sample collection and mapping accuracy are two hindering factors over large regions. Here we propose a new framework for efficient human settlement extraction from Landsat images over large areas. First, an inventory-based training set is adopted to obtain some statistical parameters required to build a non-settlement mask. The mask can not only reduce unnecessary computation but also reduce the impact of background noise. Thereafter, for the un-masked areas we calculate the similarity of each image pixel to pre-collected sample points, and only those within certain threshold are treated as the settlement class. This approach is very fast and has been applied to three rapidly developing regions in China. Accuracy assessment indicates that the mean overall accuracies are 87%, 89% and 89% for Jing-Jin-Ji region, Yangtze River Delta and Pearl River Delta, respectively. This work may be applied to human settlement extraction at even broader spatial scales. (C)2016 Elsevier Inc. All rights reserved.
机译:具有监督分类的中等分辨率(30 m)的基于卫星的人类住区提取已广泛进行。但是,足够的训练样本收集和制图精度是大区域的两个阻碍因素。在这里,我们提出了一个新的框架,可以从大面积的Landsat影像中高效地提取人类住区。首先,采用基于清单的训练集以获得构建非结算掩码所需的一些统计参数。该蒙版不仅可以减少不必要的计算,而且可以减少背景噪声的影响。此后,对于未遮罩的区域,我们计算每个图像像素与预收集的采样点的相似度,并且仅将那些在特定阈值内的像素视为沉降类别。这种方法非常快,已应用于中国三个快速发展的地区。准确性评估表明,京津冀地区,长江三角洲和珠江三角洲的平均总体准确度分别为87%,89%和89%。这项工作甚至可以应用于更广泛的空间尺度上的人类住区提取。 (C)2016 Elsevier Inc.保留所有权利。

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