首页> 外文期刊>Southern Journal of Applied Forestry >Multitemporal analysis using Landsat thematic mapper (TM) bands for forest cover classification in East Texas.
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Multitemporal analysis using Landsat thematic mapper (TM) bands for forest cover classification in East Texas.

机译:使用Landsat主题映射器(TM)波段进行多时相分析,以进行东德克萨斯州的森林覆盖分类。

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摘要

Land cover maps have been produced using satellite imagery to monitor forest resources since the launch of Landsat 1. Research has shown that stacking leaf-on and leaf-off imagery (combining two separate images into one image for processing) may improve classification accuracy. It is assumed that the combination of data will aid in the differentiation of forest types. In this study, we explored the potential benefits of using multidate imagery versus single-date imagery for operational forest cover classification as part of an annual remote sensing forest inventory system in Texas. Landsat Thematic Mapper (TM) imagery was used to classify land cover into four classes. Six band combinations were tested to determine differences in classification accuracy and if any were significant enough to justify the extra cost and increased difficulty of image acquisition. The effects of inclusion/exclusion of the moisture band (TM band 5) were also examined. Results show that the overall accuracy ranged from 72 to 79% with no significant difference between single and multidate classifications. We feel the minimal increase (3.06%) in overall accuracy, coupled with the operational difficulties of obtaining multiple (two), useable images per year, does not support the use of multidate stacked imagery. Additional research should focus on fully utilizing data from a single scene by improving classification methodologies.
机译:自Landsat 1发射以来,已经使用卫星图像制作了土地覆盖图,以监测森林资源。研究表明,堆叠有叶子和有叶子的图像(将两个单独的图像组合为一个图像进行处理)可以提高分类的准确性。假定数据的组合将有助于森林类型的区分。在这项研究中,我们探索了使用多日期影像和单日期影像进行森林覆盖分类的潜在好处,这是德克萨斯州年度遥感森林清查系统的一部分。使用Landsat专题制图器(TM)图像将土地覆盖物分为四类。测试了六个频段组合,以确定分类精度的差异,如果有显着差异,足以证明额外成本和图像采集难度增加,则可以进行区分。还检查了湿气带(TM带5)包含/排除的影响。结果表明,整体准确度介于72%至79%之间,单日期和多日期分类之间没有显着差异。我们认为整体准确性的提高幅度很小(3.06%),再加上每年获取多张(两张)可用图像的操作困难,不支持使用多日期堆叠图像。其他研究应集中在通过改进分类方法来充分利用单个场景中的数据。

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