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Object-based vegetation classification with high resolution remote sensing imagery.

机译:基于对象的植被分类和高分辨率遥感影像。

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摘要

Vegetation species are valuable indicators to understand the earth system. Information from mapping of vegetation species and community distribution at large scales provides important insight for studying the phenological (growth) cycles of vegetation and plant physiology. Such information plays an important role in land process modeling including climate, ecosystem and hydrological models. The rapidly growing remote sensing technology has increased its potential in vegetation species mapping. However, extracting information at a species level is still a challenging research topic.; I proposed an effective method for extracting vegetation species distribution from remotely sensed data and investigated some ways for accuracy improvement. The study consists of three phases. Firstly, a statistical analysis was conducted to explore the spatial variation and class separability of vegetation as a function of image scale. This analysis aimed to confirm that high resolution imagery contains the information on spatial vegetation variation and these species classes can be potentially separable. The second phase was a major effort in advancing classification by proposing a method for extracting vegetation species from high spatial resolution remote sensing data. The proposed classification employs an object-based approach that integrates GIS and remote sensing data and explores the usefulness of ancillary information. The whole process includes image segmentation, feature generation and selection, and nearest neighbor classification. The third phase introduces a spatial regression model for evaluating the mapping quality from the above vegetation classification results. The effects of six categories of sample characteristics on the classification uncertainty are examined: topography, sample membership, sample density, spatial composition characteristics, training reliability and sample object features. This evaluation analysis answered several interesting scientific questions such as (1) whether the sample characteristics affect the classification accuracy and how significant if it does; (2) how much variance of classification uncertainty can be explained by above factors.; This research is carried out on a hilly peninsular area in Mediterranean climate, Point Reyes National Seashore (PRNS) in Northern California. The area mainly consists of a heterogeneous, semi-natural broadleaf and conifer woodland, shrub land, and annual grassland. A detailed list of vegetation alliances is used in this study.; Research results from the first phase indicates that vegetation spatial variation as reflected by the average local variance (ALV) keeps a high level of magnitude between 1 m and 4 m resolution. (Abstract shortened by UMI.)
机译:植被物种是了解地球系统的宝贵指标。大规模绘制植被物种图和群落分布的信息为研究植被和植物生理学的物候(生长)周期提供了重要的见识。这些信息在包括气候,生态系统和水文模型在内的土地过程建模中发挥着重要作用。迅速发展的遥感技术增加了其在植被物种制图中的潜力。然而,在物种层面上提取信息仍然是一个具有挑战性的研究课题。我提出了一种从遥感数据中提取植被物种分布的有效方法,并研究了一些提高精度的方法。该研究包括三个阶段。首先,进行了统计分析,以探索植被的空间变化和类别可分离性与图像尺度的关系。该分析旨在确认高分辨率图像包含有关空间植被变化的信息,并且这些物种类别可能是可分离的。第二阶段是通过提出一种从高空间分辨率遥感数据中提取植被物种的方法来推进分类的重大努力。提议的分类采用了一种基于对象的方法,该方法将GIS和遥感数据集成在一起,并探索了辅助信息的有用性。整个过程包括图像分割,特征生成和选择以及最近邻分类。第三阶段引入空间回归模型,用于根据上述植被分类结果评估制图质量。检验了六类样本特征对分类不确定性的影响:地形,样本成员,样本密度,空间组成特征,训练可靠性和样本对象特征。评估分析回答了一些有趣的科学问题,例如:(1)样本特征是否会影响分类准确性以及是否显着影响分类准确性; (2)上述因素可以解释多少分类不确定性。这项研究是在地中海气候的北部半岛丘陵地区,即北加利福尼亚的雷耶斯国家海岸(PRNS)进行的。该地区主要由异质,半天然阔叶和针叶林,灌木林和一年生草地组成。本研究使用了植被联盟的详细列表。第一阶段的研究结果表明,平均局部方差(ALV)反映的植被空间变化使分辨率在1 m和4 m之间保持较高的水平。 (摘要由UMI缩短。)

著录项

  • 作者

    Yu, Qian.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Environmental Sciences.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 124 p.
  • 总页数 124
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境科学基础理论;遥感技术;
  • 关键词

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