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Characterizing conditions of California sage scrub communities in Mediterranean-type ecosystems using remote sensing.

机译:利用遥感技术对加州鼠尾草在地中海型生态系统中的群落条件进行表征。

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摘要

Biodiversity loss is an urgent global issue. For California's Mediterranean-type ecosystems, protecting biologically diverse vegetation communities such as the California sage scrub (CSS) community type is vital to conserving rare, threatened, or endangered species, as well as overall species richness of the southern and Baja California region. While existing monitoring methods such as field surveys and vegetation type mapping provide ecologically valuable information, they do not provide information about internal conditions of CSS communities. Fractional cover of plant life forms is frequently utilized to examine conditions of (semi-)arid vegetation communities. For the CSS community type, however, the utility of life-form fractional cover has not received adequate attention as an effective monitoring variable indicating ecological integrity; thus, no reliable, cost-effective methods have been developed. This dissertation investigates the effectiveness of fractional cover of true shrub, subshrub, herb, and bare ground for quantifying CSS community conditions, tests remote sensing approaches to obtain spatially comprehensive life-form cover fractions, and explores the utility of life-form fractional cover maps for sustainable, effective long-term monitoring of CSS communities of southern California.;Past studies indicate that fractional cover of plant life forms is an effective measure for quantifying CSS community integrity, and remote sensing is the only means to estimate spatially exhaustive cover fractions cost-effectively over large extent. Among the remote sensing approaches tested, object-based image analysis using pansharpened QuickBird imagery shows the most promise for estimating life-form fractional cover within CSS communities because of its high accuracy (e.g., RMSE as low as 6.4%) and robustness in estimating cover fractions and ability of providing life-form-level landscape metrics. Multiple Endmember Spectral Mixture Analysis using SPOT imagery is capable of estimating cover fractions with comparable accuracy and is beneficial for retrospective analysis for life-form cover changes and cost-effective ecological monitoring. Using spatially exhaustive life-form cover fractions, maps indicating CSS community conditions and species' life-form cover preference were generated. Such maps can fill information gaps between field-based data and vegetation type maps and provide valuable information about habitat recovery, habitat suitability, and ecological integrity of CSS communities. By combining these methods, more effective CSS community monitoring can be achieved.
机译:生物多样性丧失是一个迫在眉睫的全球性问题。对于加利福尼亚的地中海型生态系统,保护生物多样性的植被群落(例如加利福尼亚鼠尾草灌木丛(CSS)群落类型)对于保护稀有,濒危或濒危物种以及南部和下加利福尼亚地区的物种丰富度至关重要。尽管现有的监视方法(例如现场调查和植被类型映射)提供了具有生态价值的信息,但它们并未提供有关CSS社区内部条件的信息。植物生命形式的部分覆盖率经常被用来检查(半)干旱植被群落的状况。但是,对于CSS社区类型,作为有效指示生态完整性的监测变量,生命形式的部分覆盖的效用尚未得到足够的重视。因此,尚未开发出可靠的,具有成本效益的方法。本文研究了真灌木,亚灌木,草本和裸露地的部分覆盖对量化CSS群落条件的有效性,测试了遥感方法以获得空间综合的生命形式覆盖率,并探索了生活形式部分覆盖图的实用性过去的研究表明,植物生命形式的部分覆盖是量化CSS社区完整性的有效措施,而遥感是估计空间详尽的覆盖率成本的唯一方法-在很大程度上有效。在经过测试的遥感方法中,使用全锐化的QuickBird图像进行基于对象的图像分析显示出最有希望评估CSS社区内的生命形式分数覆盖率,因为它具有很高的准确性(例如,RMSE低至6.4%),并且估计覆盖率很强分数和提供生活形式的景观指标的能力。使用SPOT图像进行的多个最终成员光谱混合分析能够以相当的精度估算覆盖率,并且有利于对生命形式的覆盖变化进行回顾性分析,并具有成本效益。使用空间详尽的生命形式覆盖分数,生成了指示CSS群落条件和物种的生命形式覆盖偏好的地图。这样的地图可以填补野外数据与植被类型图之间的信息空白,并提供有关CSS社区栖息地恢复,栖息地适宜性和生态完整性的宝贵信息。通过结合使用这些方法,可以实现更有效的CSS社区监视。

著录项

  • 作者

    Hamada, Yuki.;

  • 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 Biology Conservation.;Remote Sensing.;Natural Resource Management.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 197 p.
  • 总页数 197
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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