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A New Sparsity-Based Band Selection Method for Target Detection of Hyperspectral Image

机译:基于稀疏度的高光谱图像目标检测新方法

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Band selection (BS) plays an important role in the dimensionality reduction of hyperspectral data. However, as to the existing BS methods, few are specially designed for target detection. In this letter, we combine the target detection and BS process together and put forward a new BS method for target detection, named least absolute shrinkage and selection operator (LASSO)-based BS (LBS). Interestingly, by using a linear regression model with L1 regularization (LASSO model), LBS transforms the discrete BS problem into the continuous optimization problem, which cannot only avoid the complicated subset selection process but also evaluate the importance of all the bands simultaneously. The experiments on real hyperspectral data demonstrate that LBS is a very effective BS method for target detection.
机译:波段选择(BS)在高光谱数据降维中起着重要作用。然而,对于现有的BS方法,很少有专门设计用于目标检测的方法。在这封信中,我们将目标检测和BS过程结合在一起,并提出了一种新的BS目标检测方法,即基于最小绝对收缩和选择算子(LASSO)的BS(LBS)。有趣的是,通过使用具有L1正则化的线性回归模型(LASSO模型),LBS将离散BS问题转换为连续优化问题,这不仅避免了复杂的子集选择过程,而且同时评估了所有频段的重要性。对真实高光谱数据的实验表明,LBS是一种非常有效的目标检测方法。

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