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Chance-Constrained Robust Minimum-Volume Enclosing Simplex Algorithm for Hyperspectral Unmixing

机译:高光谱解混的机会约束鲁棒最小体积封闭单纯形算法

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摘要

Effective unmixing of hyperspectral data cube under a noisy scenario has been a challenging research problem in remote sensing arena. A branch of existing hyperspectral unmixing algorithms is based on Craig's criterion, which states that the vertices of the minimum-volume simplex enclosing the hyperspectral data should yield high fidelity estimates of the endmember signatures associated with the data cloud. Recently, we have developed a minimum-volume enclosing simplex (MVES) algorithm based on Craig's criterion and validated that the MVES algorithm is very useful to unmix highly mixed hyperspectral data. However, the presence of noise in the observations expands the actual data cloud, and as a consequence, the endmember estimates obtained by applying Craig-criterion-based algorithms to the noisy data may no longer be in close proximity to the true endmember signatures. In this paper, we propose a robust MVES (RMVES) algorithm that accounts for the noise effects in the observations by employing chance constraints. These chance constraints in turn control the volume of the resulting simplex. Under the Gaussian noise assumption, the chance-constrained MVES problem can be formulated into a deterministic nonlinear program. The problem can then be conveniently handled by alternating optimization, in which each subproblem involved is handled by using sequential quadratic programming solvers. The proposed RMVES is compared with several existing benchmark algorithms, including its predecessor, the MVES algorithm. Monte Carlo simulations and real hyperspectral data experiments are presented to demonstrate the efficacy of the proposed RMVES algorithm.
机译:在嘈杂的情况下有效地分解高光谱数据立方体一直是遥感领域的一个挑战性研究问题。现有的高光谱解混算法的一个分支是基于Craig准则的,该准则指出,包围高光谱数据的最小体积单形的顶点应该产生与数据云关联的端成员签名的高保真估计。最近,我们基于克雷格(Craig)准则开发了最小体积封闭单纯形(MVES)算法,并验证了MVES算法对于解混高度混合的高光谱数据非常有用。但是,观测结果中存在噪声会扩大实际的数据云,因此,通过对嘈杂的数据应用基于Craig准则的算法获得的最终成员估计值可能不再非常接近真正的最终成员签名。在本文中,我们提出了一种鲁棒的MVES(RMVES)算法,该算法通过采用机会约束来解决观测结果中的噪声影响。这些机会约束反过来又控制了所得单纯形的数量。在高斯噪声假设下,可以将机会受限的MVES问题公式化为确定性非线性程序。然后,可以通过交替优化方便地解决该问题,其中所涉及的每个子问题都可以通过使用顺序二次规划求解器来解决。拟议的RMVES与几种现有的基准算法进行了比较,包括其前身MVES算法。提出了蒙特卡洛模拟和真实的高光谱数据实验,以证明所提出的RMVES算法的有效性。

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