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Towards Weakly Pareto Optimal: An Improved Multi-Objective Based Band Selection Method for Hyperspectral Imagery

机译:迈向弱帕累托最优:一种改进的基于多目标的高光谱图像波段选择方法

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Band selection refers to finding the most representative channels from hyperspectral images. Usually, certain objective functions are designed and combined via regularization terms. Owing to the parameters independence and the optimal solutions, multi-objective based methods have presented promising performance. However, the characteristics of the hyperspectral band selection problem make its range to be discrete. In this case, recently proposed weighted Tchebycheff based multi-objective band selection methods could only reach the weakly Pareto optimal, which would result in non-unique solutions. In this paper, we improve the decomposition process of the multi-objective based band selection method via a boundary intersection approach. Compared with weighted Tchebycheff decomposition, the proposed method is able to change the shape of the contour lines between Pareto Front and the ideal point, and this approach is particularly suitable for discrete-range problems. The effectiveness of our improvement is demonstrated by comparison experiments.
机译:波段选择是指从高光谱图像中找到最具代表性的通道。通常,某些目标函数是通过正则化条件设计和组合的。由于参数的独立性和最优解,基于多目标的方法表现出了令人鼓舞的性能。但是,高光谱波段选择问题的特征使其范围是离散的。在这种情况下,最近提出的基于加权Tchebycheff的多目标频带选择方法只能达到较弱的Pareto最优值,这将导致非唯一解。在本文中,我们通过边界相交方法改进了基于多目标的频带选择方法的分解过程。与加权Tchebycheff分解相比,该方法能够改变Pareto Front和理想点之间的轮廓线形状,该方法特别适用于离散范围问题。比较实验证明了我们改进的有效性。

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