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Spectrally Driven Classification of High Spatial Resolution, Hyperspectral Imagery: A Tool for Mapping In-Stream Habitat

机译:高空间分辨率,高光谱图像的光谱驱动分类:一种用于绘制流内生境的工具

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摘要

Streams represent an essential component of functional ecosystems and serve as sensitive indicators of disturbance. Accurate mapping and monitoring of these features is therefore critical, and this study explored the potential to characterize aquatic habitat with remotely sensed data. High spatial resolution, hyperspectral imagery of the Lamar River, Wyoming, USA, was used to examine the relationship between spectrally defined classes and field-mapped habitats. Advantages of this approach included enhanced depiction of fine-scale heterogeneity and improved portrayal of gradational zones between adjacent features. Certain habitat types delineated in the field were strongly associated with specific image classes, but most included areas of diverse spectral character; spatially buffering the field map polygons strengthened this association. Canonical discriminant analysis (CDA) indicated that the ratio of the variability among groups to that within a group was an order of magnitude greater for spectrally defined image classes (20.84) than for field-mapped habitat types (1.82), suggesting that unsupervised image classification might more effectively categorize the fluvial environment. CDA results also suggested that shortwave-infrared wavelengths were valuable for distinguishing various in-stream habitats. Although hyperspectral stream classification seemed capable of identifying more features than previously recognized, the technique also suggested that the intrinsic complexity of the Lamar River would preclude its subdivision into a discrete number of classes. Establishing physically based linkages between observed spectral patterns and ecologically relevant channel characteristics will require additional research, but hyperspectral stream classification could provide novel insight into fluvial systems while emerging as a potentially powerful tool for resource management.
机译:河流是功能生态系统的重要组成部分,是干扰的敏感指标。因此,对这些特征进行准确的制图和监测至关重要,这项研究探索了利用遥感数据表征水生生境的潜力。美国怀俄明州拉马尔河的高空间分辨率,高光谱图像用于检查光谱定义的类别与田野映射的栖息地之间的关系。这种方法的优点包括增强了对精细尺度异质性的描绘,并改善了相邻特征之间的渐变区域的刻画。田野中所描绘的某些栖息地类型与特定的图像类别密切相关,但其中大多数包括具有不同光谱特征的区域;在空间上缓冲场图多边形可增强这种关联。典范判别分析(CDA)表明,光谱定义的图像类别(20.84)的组间差异与组内变异性的比率比田间映射的栖息地类型(1.82)大一个数量级,这表明无监督的图像分类可能更有效地对河流环境进行分类。 CDA结果还表明,短波红外波长对于区分各种河流生境非常有价值。尽管高光谱流分类似乎能够识别比以前公认的更多特征,但该技术还表明,拉马尔河的内在复杂性将阻止将其细分为离散的几类。在观测到的光谱模式与生态相关的通道特征之间建立基于物理的联系将需要进一步的研究,但是高光谱流分类可以提供对河流系统的新颖见解,同时也将成为潜在的强大资源管理工具。

著录项

  • 来源
    《Environmental Management》 |2003年第3期|p. 399-411|共13页
  • 作者

    Carl J. Legleiter;

  • 作者单位

    Geography Department, UC Santa Barbara, Ellison Hall 3611, Santa Barbara, California 93106 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境保护管理;
  • 关键词

  • 入库时间 2022-08-17 13:35:05

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