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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Postfire soil burn severity mapping with hyperspectral image unmixing
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Postfire soil burn severity mapping with hyperspectral image unmixing

机译:火灾后土壤烧伤严重程度地图与高光谱图像分解

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Burn severity is mapped after wildfires to evaluate immediate and long-term fire effects on the landscape. Remotely sensed hyperspectral imagery has the potential to provide important information about fine-scale ground cover components that are indicative of burn severity after large wildland fires. Airborne hyperspectral imagery and ground data were collected after the 2002 Hayman Fire in Colorado to assess the application of high resolution imagery for burn severity mapping and to compare it to standard burn severity mapping methods. Mixture Tuned Matched Filtering (MTMF), a partial spectral unmixing algorithm, was used to identify the spectral abundance of ash, soil, and scorched and green vegetation in the burned area. The overall performance of the MTMF for predicting the ground cover components was satisfactory (r{sup}2=0.21 to 0.48) based on a comparison to fractional ash, soil, and vegetation cover measured on ground validation plots. The relationship between Landsat-derived differenced Normalized Burn Ratio (dNBR) values and the ground data was also evaluated (r{sup}2=0.20 to 0.58) and found to be comparable to the MTMF. However, the quantitative information provided by the fine-scale hyperspectral imagery makes it possible to more accurately assess the effects of the fire on the soil surface by identifying discrete ground cover characteristics. These surface effects, especially soil and ash cover and the lack of any remaining vegetative cover, directly relate to potential postfire watershed response processes.
机译:在野火之后绘制燃烧严重性地图,以评估对景观的即时和长期火灾影响。遥感高光谱图像有可能提供有关小规模地面覆盖物成分的重要信息,这些信息指示了大型野火后的烧伤严重性。在2002年科罗拉多州海曼大火后收集了机载高光谱图像和地面数据,以评估高分辨率图像在烧伤严重性制图上的应用并将其与标准烧伤严重性制图方法进行比较。混合调谐匹配滤波(MTMF)是一种部分光谱分解算法,用于识别燃烧区域中的灰分,土壤以及焦绿色植物的光谱丰度。根据与地面验证图上测得的灰分,土壤和植被覆盖率的比较,MTMF预测地面覆盖物成分的总体性能令人满意(r {sup} 2 = 0.21至0.48)。还评估了Landsat得出的差分归一化燃烧比(dNBR)值与地面数据之间的关系(r {sup} 2 = 0.20至0.58),发现与MTMF相当。但是,由细尺度的高光谱图像提供的定量信息可以通过识别离散的地面覆盖特征,更准确地评估火灾对土壤表面的影响。这些表面效应,特别是土壤和灰烬覆盖以及缺少任何剩余的植物覆盖,直接与潜在的火灾后分水岭响应过程有关。

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