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The Successive Projection Algorithm (SPA), an Algorithm with a Spatial Constraint for the Automatic Search of Endmembers in Hyperspectral Data

机译:连续投影算法(SPA),一种具有空间约束的算法,可自动搜索高光谱数据中的末端成员

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Spectral mixing is a problem inherent to remote sensing data and results in few image pixel spectra representing ″pure″ targets. Linear spectral mixture analysis is designed to address this problem and it assumes that the pixel-to-pixel variability in a scene results from varying proportions of spectral endmembers. In this paper we present a different endmember-search algorithm called the Successive Projection Algorithm (SPA). SPA builds on convex geometry and orthogonal projection common to other endmember search algorithms by including a constraint on the spatial adjacency of endmember candidate pixels. Consequently it can reduce the susceptibility to outlier pixels and generates realistic endmembers.This is demonstrated using two case studies (AVIRIS Cuprite cube and Probe-1 imagery for Baffin Island) where image endmembers can be validated with ground truth data. The SPA algorithm extracts endmembers from hyperspectral data without having to reduce the data dimensionality. It uses the spectral angle (alike IEA) and the spatial adjacency of pixels in the image to constrain the selection of candidate pixels representing an endmember. We designed SPA based on the observation that many targets have spatial continuity (e.g. bedrock lithologies) in imagery and thus a spatial constraint would be beneficial in the endmember search. An additional product of the SPA is data describing the change of the simplex volume ratio between successive iterations during the endmember extraction. It illustrates the influence of a new endmember on the data structure, and provides information on the convergence of the algorithm. It can provide a general guideline to constrain the total number of endmembers in a search.
机译:光谱混合是遥感数据固有的问题,导致很少的图像像素光谱表示“纯”目标。线性光谱混合分析旨在解决此问题,并且它假定场景中像素间的差异是由光谱末端成员比例的变化引起的。在本文中,我们提出了一种不同的端成员搜索算法,称为连续投影算法(SPA)。 SPA通过包含对端成员候选像素的空间相邻性的限制,以其他端成员搜索算法共有的凸几何和正交投影为基础。因此,它可以减少对异常像素的敏感性,并生成逼真的终端成员。这通过两个案例研究(AVIRIS Cuprite多维数据集和巴芬岛的Probe-1影像)得到了证明,其中可以使用地面真实数据验证图像终端成员。 SPA算法从高光谱数据中提取末端成员,而不必降低数据维数。它使用光谱角(类似于IEA)和图像中像素的空间相邻性来约束代表端成员的候选像素的选择。我们基于观察到的许多目标在图像中具有空间连续性(例如基岩岩性)的情况来设计SPA,因此空间约束在最终成员搜索中将是有益的。 SPA的另一个产品是描述端构件提取过程中连续迭代之间的单纯形体积比变化的数据。它说明了新的最终成员对数据结构的影响,并提供了有关算法收敛的信息。它可以提供一般准则来限制搜索中最终成员的总数。

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