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Comparing Pixel- and Object-Based Approaches in Effectively Classifying Wetland-Dominated Landscapes

机译:在有效分类湿地为主的景观中比较基于像素和基于对象的方法

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摘要

Wetland ecosystems straddle both terrestrial and aquatic habitats, performing many ecological functions directly and indirectly benefitting humans. However, global wetland losses are substantial. Satellite remote sensing and classification informs wise wetland management and monitoring. Both pixel- and object-based classification approaches using parametric and non-parametric algorithms may be effectively used in describing wetland structure and habitat, but which approach should one select? We conducted both pixel- and object-based image analyses (OBIA) using parametric (Iterative Self-Organizing Data Analysis Technique, ISODATA, and maximum likelihood, ML) and non-parametric (random forest, RF) approaches in the Barguzin Valley, a large wetland (~500 km2) in the Lake Baikal, Russia, drainage basin. Four Quickbird multispectral bands plus various spatial and spectral metrics (e.g., texture, Non-Differentiated Vegetation Index, slope, aspect, etc.) were analyzed using field-based regions of interest sampled to characterize an initial 18 ISODATA-based classes. Parsimoniously using a three-layer stack (Quickbird band 3, water ratio index (WRI), and mean texture) in the analyses resulted in the highest accuracy, 87.9% with pixel-based RF, followed by OBIA RF (segmentation scale 5, 84.6% overall accuracy), followed by pixel-based ML (83.9% overall accuracy). Increasing the predictors from three to five by adding Quickbird bands 2 and 4 decreased the pixel-based overall accuracy while increasing the OBIA RF accuracy to 90.4%. However, McNemar’s chi-square test confirmed no statistically significant difference in overall accuracy among the classifiers (pixel-based ML, RF, or object-based RF) for either the three- or five-layer analyses. Although potentially useful in some circumstances, the OBIA approach requires substantial resources and user input (such as segmentation scale selection—which was found to substantially affect overall accuracy). Hence, we conclude that pixel-based RF approaches are likely satisfactory for classifying wetland-dominated landscapes.
机译:湿地生态系统横跨陆地和水生生境,直接和间接地发挥着许多生态功能,使人类受益。但是,全球湿地损失巨大。卫星遥感和分类为明智的湿地管理和监测提供了依据。使用参数和非参数算法的基于像素和基于对象的分类方法都可以有效地用于描述湿地的结构和栖息地,但是应该选择哪种方法呢?我们在Barguzin山谷中使用参数(迭代自组织数据分析技术,ISODATA,最大似然ML)和非参数(随机森林,RF)方法,进行了基于像素和基于对象的图像分析(OBIA)。俄罗斯贝加尔湖流域的大型湿地(〜500 km 2 )。使用采样的基于场的感兴趣区域分析了四个Quickbird多光谱带以及各种空间和光谱指标(例如,纹理,无差异植被指数,坡度,长宽比等),以表征最初的18个基于ISODATA的类别。在分析中同时使用三层堆栈(Quickbird波段3,水比指数(WRI)和平均纹理)来简化分析,结果得到了最高的精度,基于像素的RF为87.9%,其次是OBIA RF(细分比例为5、84.6)整体准确度百分比),然后是基于像素的ML(整体准确度83.9%)。通过添加Quickbird频段2和4将预测变量从三个增加到五个,会降低基于像素的总体准确性,同时将OBIA RF准确性提高到90.4%。但是,McNemar的卡方检验证实,对于三层或五层分析,分类器(基于像素的ML,RF或基于对象的RF)之间的整体准确性在统计学上没有显着差异。尽管在某些情况下可能有用,但是OBIA方法需要大量资源和用户输入(例如细分比例选择,这被发现会严重影响整体准确性)。因此,我们得出结论,基于像素的RF方法对于分类湿地为主的景观可能是令人满意的。

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