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Operational monitoring of land-cover change using multitemporal remote sensing data.

机译:利用多时相遥感数据对土地覆被变化进行业务监测。

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摘要

Land-cover change, manifested as either land-cover modification and/or conversion, can occur at all spatial scales, and changes at local scales can have profound, cumulative impacts at broader scales. The implication of operational land-cover monitoring is that researchers have access to a continuous stream of remote sensing data, with the long term goal of providing for consistent and repetitive mapping. Effective large area monitoring of land-cover (i.e., >1000 km2) can only be accomplished by using remotely sensed images as an indirect data source in land-cover change mapping and as a source for land-cover change model projections.; Large area monitoring programs face several challenges: (1) choice of appropriate classification scheme/map legend over large, topographically and phenologically diverse areas; (2) issues concerning data consistency and map accuracy (i.e., calibration and validation); (3) very large data volumes; (4) time consuming data processing and interpretation. Therefore, this dissertation research broadly addresses these challenges in the context of examining state-of-the-art image pre-processing, spectral enhancement, classification, and accuracy assessment techniques to assist the California Land-cover Mapping and Monitoring Program (LCMMP).; The results of this dissertation revealed that spatially varying haze can be effectively corrected from Landsat data for the purposes of change detection. The Multitemporal Spectral Mixture Analysis (MSMA) spectral enhancement technique produced more accurate land-cover maps than those derived from the Multitemporal Kauth Thomas (MKT) transformation in northern and southern California study areas. A comparison of machine learning classifiers showed that Fuzzy ARTMAP outperformed two classification tree algorithms, based on map accuracy and algorithm robustness. Variation in spatial data error (positional and thematic) was explored in relation to environmental variables using geostatistical interpolation techniques. Finally, the land-cover modification maps generated for three time intervals (1985--1990--1996--2000), with nine change-classes revealed important variations in land-cover gain and loss between northern and southern California study areas.
机译:土地覆被变化,表现为土地覆被变化和/或转化,可以发生在所有空间尺度上,而局部尺度的变化可以在更广泛的尺度上产生深远的累积影响。可操作的土地覆盖监测的含义是,研究人员可以访问连续的遥感数据流,其长期目标是提供一致且重复的地图。只有通过使用遥感图像作为土地覆盖变化制图中的间接数据源和土地覆盖变化模型预测的源,才能有效地进行大范围的土地覆盖监测(即> 1000 km2)。大面积监测计划面临以下挑战:(1)在较大的,地形和物候方面不同的区域中选择适当的分类方案/地图图例; (2)有关数据一致性和地图准确性(即校准和验证)的问题; (3)非常大的数据量; (4)费时的数据处理和解释。因此,本论文的研究在检查最先进的图像预处理,光谱增强,分类和准确性评估技术以协助加利福尼亚州土地覆盖制图和监测计划(LCMMP)的背景下,广泛地解决了这些挑战。 ;论文的结果表明,可以从Landsat数据中有效地校正空间变化的雾度,以进行变化检测。与从加利福尼亚州北部和南部研究区的多时相Kauth Thomas(MKT)转换得到的图相比,多时相光谱混合分析(MSMA)谱增强技术产生的土地覆盖图更为准确。机器学习分类器的比较表明,基于地图准确性和算法鲁棒性,模糊ARTMAP优于两种分类树算法。使用地统计插值技术探索了与环境变量相关的空间数据误差(位置和主题)的变化。最后,以三个时间间隔(1985--1990--1996--2000)生成的土地覆被变化图(具有9个变化类别)揭示了加利福尼亚北部和南部研究区域之间土地覆被得失的重要变化。

著录项

  • 作者

    Rogan, John.;

  • 作者单位

    University of California, Santa Barbara and San Diego State University.;

  • 授予单位 University of California, Santa Barbara and San Diego State University.;
  • 学科 Physical Geography.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 532 p.
  • 总页数 532
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然地理学;遥感技术;
  • 关键词

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