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Using generalized linear models to enhance satellite-based land cover change detection.

机译:使用广义线性模型来增强基于卫星的土地覆盖变化检测。

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摘要

A popular satellite based land cover change detection technique is used to compare the spectral information for each pixel, from two images acquired at different dates. For each pixel, if there is a big enough difference between the reflectance values from the two images, the area represented by that pixel is considered to have changed. The change detection methods are different in how they determine a "big enough difference". The analyst is left to choose which function of the reflectance values to use and where to set the "change" threshold. These choices are often subjective and affect the accuracy of the change detection. In this dissertation we describe and defend the thesis that Generalized Linear Models can be used to enhance satellite based land cover change detection. Using Landsat Thematic Mapper Data from 1988 and 1994 for an area over Raleigh, North Carolina and a coastal region of North Carolina we evlauate change detection and Generalized Linear Models. For each location, land cover changes are determined from high-resolution air photo reference data. This is coupled with the satellite radiance values for the corresponding area. Generalized Linear Models are then used to regress the binary response of change/no-change (as determined from the air photos) on the radiance values extracted from the satellite imagery. In doing so, the models help determine the most appropriate function of the reflectance values to use for predicting change. For the data in this study, the GLMs indicated a combination of radiance values to be more accurate than a single band or single index. Also, the models indicate that different combinations of radiance values should be used for the different study areas. Next, the models are used to produce "accuracy assessment curves". These curves show the relationship between the location of the "change threshold" and the accuracy of the associated change classification. These curves can be used to compare two models across all possible change thresholds. Finally, the models are incorporated into the satellite imagery to produce "probability of change" (POC) images and "variability" images. In the POC image the pixels contain continuous values ranging from zero to one, representing the probability that the area has changed. The pixels in the variability image contain values corresponding to the variability of the estimated POC.; Results indicate that incorporating Generalized Linear Models into satellite based land cover change detection yields a more quantitative change detection procedure and more informative change detection products. There are three ways to utilize the models. First GLMs can help select the most significant set of explanatory variables to use in the change detection. Next, the output from the GLMs can be used to produce what we will refer to as "accuracy assessment curves". These curves show the relationship between the threshold value used to classify change areas and the accuracy of this classification. The third use is through incorporating the models into the image data to produce continuous "probability of change" images in which the pixel values range from zero to one. These values represent the probability that the area represented by that pixel has changed. (Abstract shortened by UMI.)
机译:一种流行的基于卫星的土地覆盖变化检测技术用于比较来自不同日期获取的两个图像中每个像素的光谱信息。对于每个像素,如果来自两个图像的反射率值之间有足够大的差异,则认为该像素表示的区域已更改。更改检测方法在确定“足够大的差异”方面有所不同。分析人员可以选择使用反射率值的哪个函数以及在何处设置“更改”阈值。这些选择通常是主观的,并且会影响更改检测的准确性。本文描述并捍卫了广义线性模型可用于增强基于卫星的土地覆盖变化检测的理论。使用1988年和1994年Landsat专题制图仪数据,对北卡罗来纳州罗利市和北卡罗来纳州沿海地区的区域进行评估,提出了变化检测和广义线性模型。对于每个位置,土地覆盖的变化都是根据高分辨率的航空照片参考数据确定的。这与相应区域的卫星辐射值结合在一起。然后使用广义线性模型对从卫星图像提取的辐射值回归变化/不变(从空中照片确定)的二进制响应。通过这样做,模型有助于确定反射率值的最适当函数以用于预测变化。对于本研究中的数据,GLM表示辐射值的组合比单个波段或单个索引更准确。此外,模型表明,应将不同的辐射值组合用于不同的研究区域。接下来,使用这些模型生成“准确性评估曲线”。这些曲线显示了“更改阈值”的位置与关联的更改分类的准确性之间的关系。这些曲线可用于在所有可能的变化阈值之间比较两个模型。最后,将模型合并到卫星图像中以生成“变化概率”(POC)图像和“可变性”图像。在POC图像中,像素包含从0到1的连续值,代表面积已更改的可能性。可变性图像中的像素包含与估计的POC的可变性相对应的值。结果表明,将广义线性模型结合到基于卫星的土地覆盖变化检测中可以产生更定量的变化检测程序和更多信息化的变化检测产品。有三种使用模型的方法。首先,GLM可以帮助选择最重要的解释变量集,以用于变更检测。接下来,可以将GLM的输出用于生成我们称为“准确性评估曲线”的内容。这些曲线显示了用于对变化区域进行分类的阈值与该分类的准确性之间的关系。第三种用途是将模型合并到图像数据中,以产生像素值范围从零到一的连续“变化概率”图像。这些值表示该像素表示的区域已更改的概率。 (摘要由UMI缩短。)

著录项

  • 作者

    Morisette, Jeffrey Thomas.;

  • 作者单位

    North Carolina State University.;

  • 授予单位 North Carolina State University.;
  • 学科 Agriculture Forestry and Wildlife.; Geotechnology.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 1997
  • 页码 255 p.
  • 总页数 255
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 森林生物学;地质学;遥感技术;
  • 关键词

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