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Multiple model endmember detection based on spectral and spatial information

机译:基于频谱和空间信息的多模型终点检测

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We introduce a new spectral mixture analysis approach. Unlike most available approaches that only use the spectral information, this approach uses the spectral and spatial information available in the hyperspectral data. Moreover, it does not assume a global convex geometry model that encompasses all the data but rather multiple local convex models. Both the multiple model boundaries and the model's endmembers and abundances are fuzzy. This allows points to belong to multiple groups with different membership degrees. Our approach is based on minimizing a joint objective function to simultaneously learn the underling fuzzy multiple convex geometry models and find a robust estimate of the model's endmembers and abundances.
机译:我们介绍了一种新的光谱混合分析方法。与仅使用频谱信息的最具可用方法不同,这种方法使用高光谱数据中可用的光谱和空间信息。此外,它不认为是全局凸几何模型,包括所有数据但是多个本地凸模型。多种模型边界和模型的终点和丰富都是模糊的。这允许点属于具有不同隶属度的多个组。我们的方法是基于最小化联合目标函数,同时学习底层模糊多凸几何模型,并找到模型的终端和丰富的强大估计。

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