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Low-rank and sparse NMF for joint endmembers' number estimation and blind unmixing of hyperspectral images

机译:低秩和稀疏NMF用于联合端成员数估计和高光谱图像的盲分解

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Estimation of the number of endmembers existing in a scene constitutes a critical task in the hyperspectral unmixing process. The accuracy of this estimate plays a crucial role in subsequent unsupervised unmixing steps i.e., the derivation of the spectral signatures of the endmembers (endmembers' extraction) and the estimation of the abundance fractions of the pixels. A common practice amply followed in literature is to treat endmembers' number estimation and unmixing, independently as two separate tasks, providing the outcome of the former as input to the latter. In this paper, we go beyond this computationally demanding strategy. More precisely, we set forth a multiple constrained optimization framework, which encapsulates endmembers' number estimation and unsuper-vised unmixing in a single task. This is attained by suitably formulating the problem via a low-rank and sparse nonnegative matrix factorization rationale, where low-rankness is promoted with the use of a sophisticated ℓ1/ℓ2 norm penalty term. An alternating proximal algorithm is then proposed for minimizing the emerging cost function. The results obtained by simulated and real data experiments verify the effectiveness of the proposed approach.
机译:估计场景中存在的末端成员的数量是高光谱分解过程中的关键任务。该估计的准确性在随后的无监督解混步骤中,即端成员的频谱特征的推导(端成员的提取)和像素的丰度分数的估计中起着至关重要的作用。文献中普遍遵循的一种普遍做法是将端成员的数量估计和混合分解独立地视为两个单独的任务,将前者的结果作为后者的输入。在本文中,我们超越了这种对计算要求很高的策略。更准确地说,我们提出了一个多重约束的优化框架,该框架将终端成员的数量估计和无监督的分解混合封装在单个任务中。这是通过根据低秩稀疏非负矩阵分解原理适当地表达问题来实现的,其中通过使用复杂的sub 1 /ℓ 2 规范处罚条款。然后提出了一种交替的近端算法,以最小化新出现的成本函数。通过模拟和真实数据实验获得的结果证明了该方法的有效性。

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