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Monitoring urban land cover change: An expert system approach to land cover classification of semiarid to arid urban centers

机译:监测城市土地覆盖变化:半干旱至干旱城市中心土地覆盖分类的专家系统方法

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The spatial and temporal distribution of land cover is a fundamental dataset for urban ecological research. An expert (or hypothesis testing) system has been used with Landsat Thematic Mapper (TM) data to derive a land cover classification for the semiarid Phoenix metropolitan portion of the Central Arizona-Phoenix Long Term Ecological Research (CAP LTER) site. Expert systems allow for the integration of remotely sensed data with other sources of georeferenced information such as land use data, spatial texture, and digital elevation models (DEMs) to obtain greater classification accuracy. Logical decision rules are used with the various datasets to assign class values to each pixel. TM reflectance data acquired in 1998 [visible to shortwave infrared (VSWIR) bands plus a vegetation index] were initially classified for land cover using a maximum likelihood decision rule. In addition, spatial texture of the TM data was calculated. An expert system was constructed to perform postclassification sorting of the initial land cover classification using additional spatial datasets such as texture, land use, water rights, city boundaries, and Native American reservation boundaries. Pixels were reclassified using logical decision rules into 12 classes. The overall accuracy of this technique was 85%. Individual class user's accuracy ranged from 73% to 99%, with the exception of the commercial/industrial materials class. This class performed poorly (user's accuracy of 49%) due to the similarity of subpixel components with other classes. The results presented here indicate that the expert system approach will be useful both for ongoing CAP LTER research, as well as the planned global Urban Environmental Monitoring (UEM) program of the Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER) instrument. (C) 2001 Elsevier Science Inc. All rights reserved. [References: 40]
机译:土地覆被的时空分布是城市生态研究的基本数据集。专家(或假设检验)系统已与Landsat Thematic Mapper(TM)数据一起使用,以得出亚利桑那中部凤凰城长期生态研究(CAP LTER)站点的半干旱凤凰城部分的土地覆盖分类。专家系统允许将遥感数据与其他地理参考信息源(例如土地使用数据,空间纹理和数字高程模型(DEM))集成在一起,以获得更高的分类精度。逻辑决策规则与各种数据集一起使用,为每个像素分配类别值。最初使用最大似然决策规则对1998年获得的TM反射率数据(短波红外(VSWIR)波段加上植被指数)进行了土地覆盖分类。另外,计算了TM数据的空间纹理。构建了一个专家系统,以使用其他空间数据集(例如纹理,土地使用,水权,城市边界和美国原住民保留边界)对初始土地覆盖分类进行后分类排序。使用逻辑决策规则将像素重新分类为12类。该技术的总体准确度为85%。除商业/工业材料类别外,个别类别用户的准确性范围从73%到99%。由于子像素组件与其他类别的相似性,该类别的效果很差(用户的准确度为49%)。此处显示的结果表明,专家系统方法将对正在进行的CAP LTER研究以及先进的星载热发射和反射辐射计(ASTER)仪器的计划中的全球城市环境监测(UEM)计划均有用。 (C)2001 Elsevier Science Inc.保留所有权利。 [参考:40]

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