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ENDMEMBER EXTRACTION ON THE GRASSMANNIAN

机译:格拉斯曼人的终局提取

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Endmember extraction plays a prominent role in a variety of data analysis problems as endmembers often correspond to data representing the purest or best representative of some feature. Identifying endmembers then can be useful for further identification and classification tasks. In settings with high-dimensional data, such as hyperspectral imagery, it can be useful to consider endmembers that are subspaces as they are capable of capturing a wider range of variations of a signature. The endmember extraction problem in this setting thus translates to finding the vertices of the convex hull of a set of points on a Grassmannian. In the presence of noise, it can be less clear whether a point should be considered a vertex. In this paper, we propose an algorithm to extract endmembers on a Grassmannian, identify subspaces of interest that lie near the boundary of a convex hull, and demonstrate the use of the algorithm on a synthetic example and on the 220 spectral band AVIRIS Indian Pines hyperspectral image.
机译:端成员提取在各种数据分析问题中起着重要作用,因为端成员通常对应于代表某些特征的最纯或最佳代表的数据。然后,识别端成员可能对进一步的识别和分类任务很有用。在具有高维数据(例如高光谱图像)的环境中,考虑作为子空间的端成员可能很有用,因为它们能够捕获更大范围的签名变化。因此,在这种情况下,端构件提取问题转化为在Grassmannian上找到一组点的凸包的顶点。在存在噪声的情况下,不清楚是否应将一个点视为顶点。在本文中,我们提出了一种算法,可在Grassmannian上提取端成员,识别位于凸包边界附近的感兴趣子空间,并在合成示例和220光谱带AVIRIS Indian Pines高光谱上演示该算法的使用。图片。

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