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Automatic habitat classification methods based on satellite images: A practical assessment in the NW Iberia coastal mountains

机译:基于卫星图像的栖息地自动分类方法:西北伊比利亚沿海山区的实用评估

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摘要

Although remote sensing is increasingly in use for habitat mapping, traditional image classification methods tend to suffer shortcomings due to non-normality of spectral signatures, as well as overlapping and heterogeneity in radiometric responses of natural and semi natural vegetation. Methods using non-parametric classifiers and object-oriented analysis have been suggested as possible solutions for overcoming these limitations. In this paper, we aimed at evaluating the performance of some of these techniques for the European Natura 2000 network of protected areas habitats mapping. For this purpose, we tested different methods of supervised image classification in the Northern Mountains of Galicia, Spain, an area included in the Natura 2000 network, which is characterized by a highly heterogeneous landscape. Methods involved the use of maximum likelihood and nearest neighbour decision rules in per-pixel and per-object classification analyses on Landsat TM imagery. Per-object classifications were completed using the segment mean and segment means plus standard deviation feature spaces. The results showed the existence of significant differences in the accuracies for the different methodologies, their strengths and weaknesses and identified the most adequate approach for habitat mapping. Analyses pointed out that significant improvements in accuracy were achieved only under certain combinations of per-object analysis, non-parametric classifiers and high dimensionality feature space.
机译:尽管遥感越来越多地用于栖息地制图,但是由于光谱特征的非正态性以及自然和半自然植被的辐射响应中的重叠和异质性,传统的图像分类方法往往会遭受缺点。已经提出使用非参数分类器和面向对象分析的方法作为克服这些局限性的可能解决方案。在本文中,我们旨在评估其中一些技术在欧洲Natura 2000保护区栖息地测绘网络中的性能。为此,我们测试了西班牙加利西亚北部山区的不同的监督图像分类方法,该地区属于Natura 2000网络,该地区的特征是高度异构。方法包括在Landsat TM影像的按像素和按对象分类分析中使用最大似然和最邻近决策规则。使用分段均值和分段均值加上标准偏差特征空间来完成每个对象的分类。结果表明,对于不同方法,其优缺点,准确性存在显着差异,并确定了最合适的栖息地作图方法。分析指出,只有在逐对象分析,非参数分类器和高维特征空间的某些组合下才能实现准确性的显着提高。

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