利用多时相遥感数据对加州森林覆盖变化进行业务监测

J. Rogan, J. Franklin, D. Stow, L. Levien, C. Fischer
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引用次数: 8

摘要

本文提出了研究的初步结果,以改进现有的操作森林变化检测监测战略在加利福尼亚州。比较。在Landsat 5 TM和Landsat 7 ETM场景归一化技术之间进行比较(绝对vs相对)。在归一化之前,使用空间变化的雾霾均衡算法成功地校正了包含野火烟雾羽的场景。简单的暗对象减法比相对(伪不变特征)方法提供了更好的性能。决策树分类器对五类森林覆盖变化产生了很高的变化图总体精度(86%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward operational monitoring of forest cover change in California using multitemporal remote sensing data
This paper presents preliminary results of research to improve upon an existing operational forest change detection monitoring strategy in California. Comparisons were. made between Landsat 5 TM and Landsat 7 ETM scene normalization techniques (absolute versus, relative). Prior to normalization, scenes containing wildfire smoke plumes were successfully corrected using a space-varying haze equalization algorithm. Simple dark object subtraction provided improved performance over relative (pseudo-invariant feature) approaches. A decision tree classifier produced high change map overall accuracy (86%) for five categories of forest cover change.
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