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Online Unmixing of Multitemporal Hyperspectral Images Accounting for Spectral Variability

机译:多时相高光谱图像的在线分解考虑了光谱变异性

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Hyperspectral unmixing is aimed at identifying the reference spectral signatures composing a hyperspectral image and their relative abundance fractions in each pixel. In practice, the identified signatures may vary spectrally from an image to another due to varying acquisition conditions, thus inducing possibly significant estimation errors. Against this background, the hyperspectral unmixing of several images acquired over the same area is of considerable interest. Indeed, such an analysis enables the endmembers of the scene to be tracked and the corresponding endmember variability to be characterized. Sequential endmember estimation from a set of hyperspectral images is expected to provide improved performance when compared with methods analyzing the images independently. However, the significant size of the hyperspectral data precludes the use of batch procedures to jointly estimate the mixture parameters of a sequence of hyperspectral images. Provided that each elementary component is present in at least one image of the sequence, we propose to perform an online hyperspectral unmixing accounting for temporal endmember variability. The online hyperspectral unmixing is formulated as a two-stage stochastic program, which can be solved using a stochastic approximation. The performance of the proposed method is evaluated on synthetic and real data. Finally, a comparison with independent unmixing algorithms illustrates the interest of the proposed strategy.
机译:高光谱解混旨在识别组成高光谱图像的参考光谱特征及其在每个像素中的相对丰度分数。在实践中,由于变化的采集条件,所识别的签名可能会在图像上从一个图像到另一个图像在光谱上发生变化,从而引起可能的明显估计误差。在这种背景下,在同一区域上采集的几幅图像的高光谱解混引起了人们的极大兴趣。实际上,这样的分析使得能够追踪场景的末端成员并且能够表征相应的末端成员变异性。与独立分析图像的方法相比,预期从一组高光谱图像进行顺序端成员估计将提供更高的性能。但是,由于高光谱数据的数量巨大,因此无法使用批处理程序共同估算一系列高光谱图像的混合参数。假设每个基本成分都存在于序列的至少一个图像中,我们建议对时间端成员的变异性进行在线高光谱分解。在线高光谱解混公式化为两阶段随机程序,可以使用随机逼近法求解。在综合和真实数据上评估了所提出方法的性能。最后,与独立解混算法的比较说明了所提出策略的兴趣。

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