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Based on linear spectral mixture model (LSMM) unmixing remote sensing image

机译:基于线性光谱混合模型(LSMM)的混合遥感图像

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摘要

There are mixed pixels in remote sensing images ordinarily, this is a difficulty of the pixel classification (ie, unmixing) in remote sensing image processing.Linear spectral separation, estimating the value end of Genpo degree, for spatial modeling, through the non-constrained mixed pixel decomposition,with cotton, corn, tomatoes and soil four endmembers to decompose mixed pixels, Got four endmember abundance images and the RMS error image, the planting area of cotton and cotton-growing area of the measurement in the decomposition of mixed pixel block, and obtained unmixing accuracy. Experimental results show that: a simple linear mixed model modeling, and computation is greatly reduced, high precision, strong adaptability.
机译:遥感图像中通常存在混合像素,这是遥感图像处理中像素分类(即混合)的难点。线性光谱分离,通过非约束估计Genpo度的值端,用于空间建模混合像素分解,用棉花,玉米,番茄和土壤四个端元分解混合像素,得到四个端元丰度图像和RMS误差图像,在混合像素块分解中测量棉花的种植面积和棉花种植面积,并获得解混精度。实验结果表明:简单的线性混合模型建模,并且计算量大大减少,精度高,适应性强。

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