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Mapping forest alliances and associations using fuzzy systems and nearest neighbor classifiers

机译:使用模糊系统和最近邻分类器映射森林联盟和关联

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The study and management of biological communities depends on systems of classification and mapping for the organization and communication of resource information. Recent advances in remote sensing technology may enable the mapping of forest plant associations using image classification techniques. But few areas outside Europe have alliances and associations described in detail sufficient to support remote sensing-based modeling. Northwestern Montana has one of the few completed plant association classifications in the United States compliant with the recently established National Vegetation Classification system. This project examined the feasibility of mapping forest plant associations using Landsat Enhanced Thematic Mapper Plus data and advanced remote sensing technology and image classification techniques. Suitable reference data were selected from an extensive regional database of plot records. Fifteen percent of the plot samples were reserved for validation of map products, the remainder of plots designated as training data for map modeling. Key differentiae for image classification were identified from a suite of spectral and biophysical variables. Fuzzy rules were formulated for partitioning physiognomic classes in the upper levels of our image classification hierarchy. Nearest neighbor classifiers were developed for classification of lower levels (alliances and associations), where spectral and biophysical contrasts are less distinct. Maps were produced to reflect nine forest alliances and 24 associations across the study area. Error matrices were constructed for each map based on stratified random selections of map validation samples. Accuracy for the alliance map was estimated at 60%. Association classifiers provide between 54 and 86% accuracy within their respective alliances. Alternative techniques are proposed for aggregating classes and enhancing decision tree classifiers to model alliances and associations for interior forest types. Published by Elsevier Inc.
机译:生物群落的研究和管理取决于资源信息的组织和交流的分类和绘图系统。遥感技术的最新进展可能使得能够使用图像分类技术来映射森林植物协会。但是,欧洲以外的地区很少有详细描述的联盟和协会足以支持基于遥感的建模。西北蒙大拿州是美国为数不多的完整植物协会分类之一,符合最近建立的国家植被分类系统。该项目研究了使用Landsat Enhanced Thematic Mapper Plus数据以及先进的遥感技术和图像分类技术对森林植物协会进行制图的可行性。从广泛的地块记录区域数据库中选择合适的参考数据。保留了15%的样地样本用于验证地图产品,其余的样地指定为地图建模的训练数据。从一组光谱和生物物理变量中确定了图像分类的关键区别。制定了模糊规则,用于在图像分类层次结构的上层划分生理类别。开发了最近的邻居分类器以对较低级别(联盟和关联)进行分类,其中频谱和生物物理对比不太明显。绘制了地图以反映研究区域内的9个森林联盟和24个协会。基于地图验证样本的分层随机选择,为每个地图构建误差矩阵。联盟地图的准确性估计为60%。协会分类器在各自的联盟中提供54%至86%的准确性。提出了替代技术来汇总类并增强决策树分类器,以对内部森林类型的联盟和关联进行建模。由Elsevier Inc.发布

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