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Unsupervised unmixing of hyperspectral imagery using the constrained positive matrix factorization.

机译:使用约束正矩阵分解对高光谱图像进行无监督分解。

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In hyperspectral imaging, hundreds of images are taken at narrow and contiguous spectral bands providing us with high spectral resolution spectral signatures that can be used to discriminate between objects. In many applications, the measured spectral signature is a mixture of the object of interest, and other objects within the field of view of the sensor. To determine which objects are in the field of view of the sensor, we need to decompose the measured spectral signature in its constituents and their contribution to the measured signal. This research dealt with the unsupervised determination of the constituents and their fractional abundance in each pixel in a hyperspectral image using a constrained positive matrix factorization (cPMF). Different algorithms are presented to compute the cPMF. Tests and validation with real and simulated data show the effectiveness of the method. Application of the approach to environmental remote sensing and microscopic imaging is shown.
机译:在高光谱成像中,在狭窄且连续的光谱带上拍摄了数百张图像,为我们提供了可用于区分物体的高光谱分辨率光谱特征。在许多应用中,测得的光谱特征是感兴趣的物体和传感器视场内其他物体的混合物。为了确定传感器视野中的哪些对象,我们需要分解测得的光谱特征及其成分以及它们对测得信号的贡献。这项研究使用约束正矩阵分解(cPMF)处理了高光谱图像中每个像素的成分及其分数丰度的无监督确定。提出了不同的算法来计算cPMF。使用真实和模拟数据进行的测试和验证表明了该方法的有效性。显示了该方法在环境遥感和显微成像中的应用。

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