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New Theory for Unmixing ILL-Conditioned Hyperspectral Mixtures

机译:分解含ILL条件的高光谱混合物的新理论

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Hyperspectral unmixing (HU), a blind source separation problem, aims at unambiguiously identifying the spectral signatures of the materials, as well as their abundances, from the measured hyperspectral mixtures. In real hyperspectral scenes, high correlation between the spectral signatures is commonly observed, making HU quite challenging. Although such ill-conditioning is critical for effective HU, it is often ignored in existing HU literature. To the best of our knowledge, existing preconditioning techniques, for reducing the condition number of the signature matrix, were developed based on the pure-pixel assumption, which can, however, be seriously violated in remote sensing. Under a relaxed purity assumption, with respect to the pure-pixel one, this paper proposes novel theory for unmixing ill-conditioned hyperspectral mixtures. Specifically, we exactly identify the John's ellipsoid (i.e., the maximum ellipsoid inscribed in the convex hull of the hyperspectral data vectors) via split augmented Lagrangian shrinkage algorithm (SALSA), and transform this ellipsoid into an Euclidean ball. This transformation brings the data vectors into a new space wherein the corresponding material signature vectors form a regular simplex, which is a very strong prior information. Based on this prior, we design an HU criterion, and prove its perfect identifiability under a very mild sufficient condition. Then, we demonstrate the feasibility of realizing our criterion via non-convex optimization and guarantee a stationary point solution.
机译:高光谱解混(HU)是一种盲源分离问题,旨在从测量的高光谱混合物中明确识别材料的光谱特征及其丰度。在真实的高光谱场景中,通常会观察到光谱特征之间的高度相关性,这使HU颇具挑战性。尽管这种不适状况对于有效的HU至关重要,但在现有的HU文献中经常忽略它。据我们所知,基于纯像素假设开发了用于减少签名矩阵的条件数的现有预处理技术,但是在遥感中可能会严重违反该条件。在一个宽松的纯度假设下,相对于纯像素而言,本文提出了一种新的理论,用于分解病态的高光谱混合物。具体而言,我们通过拆分增强拉格朗日收缩算法(SALSA)精确识别John椭球(即高光谱数据向量的凸包中内接的最大椭球),并将该椭球转换为欧几里得球。这种转换将数据向量带入一个新的空间,其中相应的材料签名向量形成一个规则的单纯形,这是一个非常强的先验信息。基于此先验,我们设计了一个HU准则,并在非常温和的充分条件下证明了其完美的可识别性。然后,我们证明了通过非凸优化实现准则的可行性,并保证了定点解。

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