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Convex Hyperspectral Unmixing Algorithm Using Parameterized Non-convex Penalty Function

机译:使用参数化非凸损函数的凸起高光谱解混算法

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Unmixing of hyperspectral data is an area of major research because the information it provides is utilized in plethora of fields. The year of 2006 witnessed the emergence of Compressed Sensing algorithm which was later used to spearhead research in umixing problems. Later, the notion of ?_p norms 0 < p < 1 and other non-smooth and non-convex penalty function were used in place of the traditional convex ?_1 penalty. Dealing with optimization problems with non-convex objective function is rather difficult as most methodologies often get stuck at local optima. In this paper, a parameterised non-convex penalty function is used to induce sparsity in the unknown.The parameters of penalty function can be adjusted so as to make the objective function convex, thus resulting in the possibility of finding a global optimal solution. Here ADMM algorithm is utilized to arrive at the final iterative algorithm for the unmixing problem. The algorithm is tested on synthetic data set, generated from the spectral library provided by US geological survey. Different parametric penalty functions like log and arctan are used in the algorithm and is compared with the traditional ?_1 penalties, in terms of the performance measures RSNR and PoS. It was observed that the non-convex penalty functions out-performs the ?_1 penalty in terms of the aforementioned measures.
机译:Homixpectral数据是一个主要研究领域,因为它提供的信息在血清域内使用。 2006年度目睹了压缩传感算法的出现,后来用于少杂地区的矛头研究。后来,使用概念_p规范0 <1等非平滑和非凸损函数代替传统的凸起_1罚款。根据大多数方法经常在本地最佳函数陷入困境,处理具有非凸面目标函数的优化问题。在本文中,使用参数化的非凸损函数来引起未知的稀疏性。可以调整惩罚功能的参数,以便使目标函数凸起,从而导致找到全局最佳解决方案的可能性。这里使用ADMM算法来到达解密问题的最终迭代算法。该算法在由美国地质调查提供的频谱库中产生的合成数据集。在算法中使用像日志和arctan等不同的参数惩罚函数,并与传统的罚款进行比较,就性能测量RSNR和POS而言。有人观察到,非凸罚职能在上述措施方面出现了?_1罚款。

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