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Sensitivity of spectral reflectance values to different burn and vegetation ratios: A multi-scale approach applied in a fire affected area

机译:光谱反射率值对不同烧伤和植被比率的敏感性:在火灾影响区域中应用的多尺度方法

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The aim of our study was to explore the spectral properties of fire-scorched (burned) and non fire-scorched (vegetation) areas, as well as areas with different burn/vegetation ratios, using a multisource multiresolution satellite data set. A case study was undertaken following a very destructive wildfire that occurred in Parnitha, Greece, July 2007, for which we acquired satellite images from LANDSAT, ASTER, and IKONOS. Additionally, we created spatially degraded satellite data over a range of coarser resolutions using resampling techniques. The panchromatic (1 m) and multispectral component (4 m) of IKONOS were merged using the Gram-Schmidt spectral sharpening method. This very high-resolution imagery served as the basis to estimate the cover percentage of burned areas, bare land and vegetation at pixel level, by applying the maximum likelihood classification algorithm. Finally, multiple linear regression models were fit to estimate each land-cover fraction as a function of surface reflectance values of the original and the spatially degraded satellite images. The main findings of our research were: (a) the Near Infrared (NIR) and Short-wave Infrared (SWIR) are the most important channels to estimate the percentage of burned area, whereas the NIR and red channels are the most important to estimate the percentage of vegetation in fire-affected areas; (b) when the bi-spectral space consists only of NIR and SWIR, then the NIR ground reflectance value plays a more significant role in estimating the percent of burned areas, and the SWIR appears to be more important in estimating the percent of vegetation; and (c) semi-burned areas comprising 45-55% burned area and 45-55% vegetation are spectrally closer to burned areas in the NIR channel, whereas those areas are spectrally closer to vegetation in the SWIR channel. These findings, at least partially, are attributed to the fact that: (i) completely burned pixels present low variance in the NIR and high variance in the SWIR, whereas the opposite is observed in completely vegetated areas where higher variance is observed in the NIR and lower variance in the SWIR, and (ii) bare land modifies the spectral signal of burned areas more than the spectral signal of vegetated areas in the NIR, while the opposite is observed in SWIR region of the spectrum where the bare land modifies the spectral signal of vegetation more than the burned areas because the bare land and the vegetation are spectrally more similar in the NIR, and the bare land and burned areas are spectrally more similar in the SWIR.
机译:我们研究的目的是使用多源多分辨率卫星数据集,探索火烧(燃烧)和非火烧(植被)区域以及具有不同燃烧/植被比率的区域的光谱特性。案例研究是在2007年7月发生在希腊帕尼萨(Parnitha)的一次极具破坏性的野火之后进行的,为此,我们从LANDSAT,ASTER和IKONOS处获取了卫星图像。此外,我们使用重采样技术在较粗略的分辨率范围内创建了空间退化的卫星数据。使用Gram-Schmidt光谱锐化方法将IKONOS的全色(1 m)和多光谱分量(4 m)合并。通过应用最大似然分类算法,此高分辨率图像可作为估算像素级别上的烧毁面积,裸露土地和植被的覆盖率的基础。最后,使用多个线性回归模型来估计每个土地覆盖率,作为原始和空间退化卫星图像的表面反射率值的函数。我们研究的主要发现是:(a)近红外(NIR)和短波红外(SWIR)是估计燃烧面积百分比的最重要通道,而NIR和红色通道是估计燃烧面积百分比的最重要通道受灾地区的植被百分比; (b)当双光谱空间仅由NIR和SWIR组成时,则NIR地面反射率值在估计燃烧面积的百分比中起着更重要的作用,而SWIR在估计植被的百分比中似乎更为重要; (c)包括45-55%的燃烧面积和45-55%的植被的半燃烧区在光谱上更接近NIR通道中的燃烧区,而这些区域在光谱上更靠近SWIR通道中的植被。这些发现至少部分归因于以下事实:(i)完全燃烧的像素在NIR中呈现出低方差而在SWIR中呈现出高方差,而在完全植被的区域中却观察到了相反的情况,在NIR中观察到了较高方差且SWIR的方差较低;(ii)裸地对NIR植被区的光谱信号的影响要大于植被区的光谱信号,而在光谱的SWIR区域中,裸地对光谱的影响则相反植被的信号比燃烧区更多,因为在近红外光谱中,光秃秃的土地和植被在光谱上更相似,而在西南红外光谱中,光秃秃的土地和燃烧区在光谱上更相似。

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