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End-member extraction using cone non-negativity constraints

机译:使用锥形非消极限制的终端构提取

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摘要

This paper presents a new factorization approach for hyperspectral data based on non-negativity constraints. The method does not assume a one to one correspondence between the pseudo-rank of the data matrix and the number of unique components present. Rather it assumes that the number of unique components is related to the number of extreme points of the cone formed by the data matrix. The cone is represented by singular vectors and a set of linear homogeneous inequality constraints. The extraction of extremes is based on the identification of non-redundant inequalities. The approach is illustrated in an application to an AVIRIS spectral image of the Cuprite mining site.
机译:本文提出了一种基于非消极限制的高光谱数据的新分解方法。该方法不假设数据矩阵的伪等级与存在的唯一组件的数量之间的一个对应关系。相反,它假设唯一组件的数量与由数据矩阵形成的锥体的极端点的数量有关。锥形由奇异载体和一组线性均匀不等式约束表示。极端的提取是基于非冗余不平等的识别。该方法在铜矿挖掘部位的Aviris光谱图像的应用中示出。

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