存在稀疏多重散射非线性的快速高光谱解混

Abderrahim Halimi, J. Bioucas-Dias, N. Dobigeon, G. Buller, S. Mclaughlin
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引用次数: 0

摘要

提出了一种新的非线性高光谱混合模型及其监督解混算法。该模型假定为一个线性混合模型,该模型被一个考虑多重散射非线性的加性项所破坏。该模型通过考虑高阶相互作用项来推广双线性模型。该模型的丰度和非线性系数的推断被表述为一个适用于快速估计算法的凸优化问题。该公式考虑了诸如丰度的和为一和非负性、非线性系数的非负性以及残差的空间稀疏性等约束。利用乘法器交替方向法(ADMM)解决了由此产生的凸问题,从理论上保证了该方法的收敛性。所提出的混合模型及其解混算法在合成图像和真实图像上进行了验证,与最先进的算法相比,在推理质量和计算复杂度方面显示出竞争结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast hyperspectral unmixing in presence of sparse multiple scattering nonlinearities
This paper presents a novel nonlinear hyperspectral mixture model and its associated supervised unmixing algorithm. The model assumes a linear mixing model corrupted by an additive term which accounts for multiple scattering nonlinearities (NL). The proposed model generalizes bilinear models by taking into account higher order interaction terms. The inference of the abundances and nonlinearity coefficients of this model is formulated as a convex optimization problem suitable for fast estimation algorithms. This formulation accounts for constraints such as the sum-to-one and nonnegativity of the abundances, the non-negativity of the nonlinearity coefficients, and the spatial sparseness of the residuals. The resulting convex problem is solved using the alternating direction method of multipliers (ADMM) whose convergence is ensured theoretically. The proposed mixture model and its unmixing algorithm are validated on both synthetic and real images showing competitive results regarding the quality of the inference and the computational complexity when compared to the state-of-the-art algorithms.
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