The effect of vegetation type and density on X-band SAR backscatter after forest fires

Q Social Sciences
E. Bernhard, A. Twele, S. Martinis
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引用次数: 5

Abstract

Various frequencies (e.g. visible light, infrared, microwaves) from remote sensing sensors can be used for active fire mapping, forest fire detection and fire emission assessment. However, little is known about the applicability of X-band SAR data for burned area detection. This paper presents a detailed SAR backscatter coefficient analysis and accuracy assessment with respect to CORINE 2006 land cover data. For this purpose five forest fires have been analyzed. Dry as well as wet acquisition conditions have been taken into account. The analysis demonstrated that largest differences in backscatter coefficients between pre- and post-fire conditions were linked to tall and dense vegetation types. Contrarily, scant vegetation was marked by lowest signal differences. High correlation coefficients have been obtained from regression analysis between vegetation indices and SAR backscatter changes. Moreover, a burned area classification algorithm with different thresholds for each vegetation type has been applied. The classification result illustrated that areas abundantly covered with vegetation showed classification accuracies of ~91 %, whereas sparse vegetation achieved ~5 % accuracies.
植被类型和密度对森林火灾后x波段SAR后向散射的影响
来自遥感传感器的各种频率(例如可见光、红外线、微波)可用于主动火灾测绘、森林火灾探测和火灾排放评估。然而,人们对x波段SAR数据在烧伤区域探测中的适用性知之甚少。本文对CORINE 2006土地覆盖数据进行了详细的SAR后向散射系数分析和精度评估。为此,对五起森林火灾进行了分析。干采集条件和湿采集条件都被考虑在内。分析表明,火灾前后背向散射系数的最大差异与植被类型的高、密有关。相反,较少的植被标志着最低的信号差异。通过对植被指数与SAR后向散射变化的回归分析,得到了较高的相关系数。并对不同植被类型采用不同阈值的烧伤面积分类算法。分类结果表明,植被覆盖丰富地区的分类精度为~ 91%,而植被稀疏地区的分类精度为~ 5%。
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来源期刊
Photogrammetrie Fernerkundung Geoinformation
Photogrammetrie Fernerkundung Geoinformation REMOTE SENSING-IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
CiteScore
1.36
自引率
0.00%
发文量
0
审稿时长
>12 weeks
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