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Band Selection of Hyperspectral Images Using Multiobjective Optimization-Based Sparse Self-Representation

机译:基于多目标优化的稀疏自我表示的高光谱图像的频段选择

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Hyperspectral images (HSIs) consist of hundreds of continuous bands with high correlation, making it contain great abundant information. Band selection is an effective idea for removing redundant bands and preserving the physical significance at the same time. Popular sparse representation-based band selection commonly introduces an additional coefficient to combine error term and sparse constraint term, making it difficult to find out the optimal balance coefficient. In this letter, we propose a hybrid clustering-based band-selection approach based on using evolutionary multiobjective optimization to solve a sparse self-representation model constituted with two conflicting objectives. The proposed approach simultaneously minimizes two terms of the sparse representation model, avoiding the balance coefficient and producing a set of optimal solutions that are used to construct a similarity matrix for spectral clustering. Finally, a reduced band subset is determined by the cluster centers. We compare the results of the proposed approach with four existing band-selection methods for three real HSI data sets, showing that the proposed approach is able to effectively select representative bands with better classification accuracy.
机译:高光谱图像(HSIS)由数百个具有高相关的连续频带组成,使其包含很大的信息。频段选择是删除冗余频带并同时保留物理意义的有效思想。流行的稀疏表示的频带选择通常引入额外的系数来组合误差项和稀疏约束项,使得难以找到最佳平衡系数。在这封信中,我们提出了一种基于混合聚类的频带选择方法,基于使用进化多目标优化来解决由两个冲突目标构成的稀疏自我表示模型。所提出的方法同时最小化稀疏表示模型的两个术语,避免了平衡系数和产生一组最佳解决方案,用于构造用于频谱聚类的相似性矩阵。最后,减少频带子集由群集中心确定。我们将所提出的方法的结果与三个真实的HSI数据集的四种现有频段选择方法进行比较,表明所提出的方法能够有效地选择具有更好分类精度的代表频带。

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