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首页> 外文期刊>International journal of remote sensing >Assessment of the universal pattern decomposition method using MODIS and ETM+ data
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Assessment of the universal pattern decomposition method using MODIS and ETM+ data

机译:使用MODIS和ETM +数据评估通用模式分解方法

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摘要

The universal pattern decomposition method (UPDM) is a sensor-independent method in which each satellite pixel is expressed as the linear sum of fixed, standard spectral patterns for water, vegetation and soil. The same normalized spectral patterns can be used for different solar-reflected spectral satellite sensors. Supplementary patterns are included when necessary. The UPDM has been applied successfully to simulated data for Landsat/ETM +, Terra/MODIS, ADEOS-II/GLI and 92-band CONTINUE sensors using ground-measured data. This study validates the UPDM using MODIS and ETM + data acquired over the Three Gorges region of China. The reduced χ~2 values for selected area D, that with the smallest terrain influences, are 0.000409 (MODIS) and 0.000181 (ETM +), and the average linear regression factor between MODIS and ETM + is 1.0077, with root mean square (rms) value 0.0082. The linear regression factor for the vegetation index based on the UPDM (VIUPD) between MODIS and ETM+ data for area D is 1.0089 with rms 0.0696. Both UPDM coefficients and VIUPD are sensor independent for the above sensors.
机译:通用模式分解方法(UPDM)是一种与传感器无关的方法,其中,每个卫星像素都表示为水,植被和土壤的固定标准光谱模式的线性总和。相同的归一化光谱模式可用于不同的太阳反射光谱卫星传感器。必要时包括补充模式。 UPDM已使用地面测量数据成功应用于Landsat / ETM +,Terra / MODIS,ADEOS-II / GLI和92波段CONTINUE传感器的模拟数据。本研究使用在中国三峡地区获得的MODIS和ETM +数据验证了UPDM。所选区域D的χ〜2减小的值(具有最小的地形影响)为0.000409(MODIS)和0.000181(ETM +),并且MODIS和ETM +之间的平均线性回归因子为1.0077,均方根(rms) )值0.0082。基于MODIS和ETM +数据之间区域UPDM(VIUPD)的植被指数的线性回归因子为1.0089,均方根值为0.0696。对于上述传感器,UPDM系数和VIUPD都是独立于传感器的。

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