首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >CLASSIFICATION OF MULTISPECTRAL IMAGES BASED ON FRACTIONS OF ENDMEMBERS - APPLICATION TO LAND-COVER CHANGE IN THE BRAZILIAN AMAZON
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CLASSIFICATION OF MULTISPECTRAL IMAGES BASED ON FRACTIONS OF ENDMEMBERS - APPLICATION TO LAND-COVER CHANGE IN THE BRAZILIAN AMAZON

机译:基于局域分数的多光谱图像分类-在巴西亚马逊土地覆被变化中的应用

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摘要

Four time-sequential Landsat Thematic Mapper (TM) images of an area of Amazon forest, Pasture, and second growth near Manaus, Brazil were classified according to dominant ground cover, using a new technique based on fractions of spectral endmembers. A simple four-endmember model consisting of reflectance spectra of green vegetation, nonphotosynthetic vegetation, soil, and shade was applied to all four images. Fractions of endmembers were used to define seven categories, each of which consisted of one or more classes of ground cover, where class names were based on field observations. Endmember fractions varied over time for many pixels, reflecting processes operating on the ground such as felling of forest, or regrowth of vegetation in previously cleared areas. Changes in classes over time were used to establish superclasses which grouped pixels having common histories. sources of classification error were evaluated, including system noise, endmember variability, and low spectral contrast. Field work during each of the four years showed consistently high accuracy in per-image classification. Classification accuracy in any one year was improved by considering the multiyear context. Although the method was tested in the Amazon basin, the results suggest that endmember classification may be generally useful for comparing multispectral images in space and time. [References: 31]
机译:使用基于光谱末端成员比例的新技术,根据占主导地位的地面覆盖物,对巴西亚马逊河森林,牧场和巴西马瑙斯附近的第二个生长区的四个按时间顺序排列的Landsat Thematic Mapper(TM)图像进行了分类。将由绿色植被,非光合植被,土壤和阴影的反射光谱组成的简单四端模型应用于所有四个图像。端构件的分数用于定义七个类别,每个类别由一或多个类别的地面覆盖物组成,其中类别名称是根据现场观察得出的。最终成员分数随时间变化而变化为许多像素,反映了在地面上进行的过程,例如砍伐森林或在先前清理过的区域中植被重新生长。类随时间的变化用于建立将具有共同历史的像素分组的超类。评估了分类错误的来源,包括系统噪声,末端成员变异性和低光谱对比度。四年中的每一年的野外工作均显示出每张图像分类的高精度。考虑到多年背景,可以提高任何一年的分类准确性。尽管该方法在亚马逊盆地进行了测试,但结果表明,端元分类通常可用于比较时空的多光谱图像。 [参考:31]

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