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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >National Park vegetation mapping using multitemporal Landsat 7 data and a decision tree classifier
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National Park vegetation mapping using multitemporal Landsat 7 data and a decision tree classifier

机译:使用多时态Landsat 7数据和决策树分类器的国家公园植被映射

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Decision tree classifiers have received much recent attention, particularly with regards to land cover classifications at continental to global scales. Despite their many benefits and general flexibility, the use of decision trees with high spatial resolution data has not yet been fully explored. In support of the National Park Service (NPS) Vegetation Mapping Program (VMP), we have examined the feasibility of using a commercially available decision tree classifier with multitemporal satellite data from the Enhanced Thematic Mapper-Plus (ETM+) instrument to map 11 land cover types at the Delaware Water Gap National Recreation Area near Milford, PA. Ensemble techniques such as boosting and consensus filtering of the training data were used to improve both the quality of the input training data as well as the final products. Using land cover classes as specified by the National Vegetation Classification Standard at the Formation level, the final land cover map has an overall accuracy of 82% (kappa = 0. 80) when tested against a validation data set acquired on the ground (n = 195). This same accuracy is 99.5% when considering only forest vs. nonforest classes. Usage of ETM+ scenes acquired at multiple dates improves the accuracy over the use of a single date, particularly for the different forest types. These results demonstrate the potential applicability and usability of such an approach to the entire National Park system, and to high spatial resolution land cover and forest mapping applications in general. (C) 2003 Elsevier Science Inc. All rights reserved. [References: 27]
机译:决策树分类器最近受到了很多关注,特别是在大陆到全球范围内的土地覆盖分类方面。尽管它们具有许多好处和普遍的灵活性,但尚未充分探索具有高空间分辨率数据的决策树的使用。为了支持国家公园管理局(NPS)植被测绘计划(VMP),我们研究了使用市售决策树分类器和来自增强型专题测绘仪(ETM +)仪器的多时相卫星数据测绘11个土地覆盖的可行性。宾夕法尼亚州米尔福德市附近的特拉华州水隙国家游乐区的类型。诸如训练数据的增强和共识过滤之类的组合技术被用来提高输入训练数据以及最终产品的质量。根据国家植被分类标准在地层级别上指定的土地覆盖类别,对地面获取的验证数据集进行测试时,最终的土地覆盖图的总体准确度为82%(kappa = 0. 80)。 195)。仅考虑森林类别和非森林类别时,此相同的准确性为99.5%。使用多个日期获取的ETM +场景可以提高使用单个日期的准确性,尤其是对于不同的森林类型而言。这些结果证明了这种方法在整个国家公园系统以及一般在高空间分辨率土地覆盖和森林制图应用中的潜在适用性和可用性。 (C)2003 Elsevier Science Inc.保留所有权利。 [参考:27]

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