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Sparse linear filters for detection and classification in hyperspectral imagery

机译:稀疏线性滤波器,用于在高光谱图像中检测和分类

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We investigate the use of convex optimization to identify sparse linear filters in hyperspectral imagery. A linear filter is sparse if a large fraction of its coefficients are zero. A sparse linear filter can be advantageous because it only needs to access a subset of the available spectral channels, and it can be applied to high-dimensional data more cheaply than a standard linear detector. Finding good sparse filters is nontrivial because there is a combinatorially large number of discrete possibilities from which to choose the optimal subset of nonzero coefficients. But, by converting the optimality criterion into a convex loss function, and by employing an L1 penalty, one can obtain sparse solutions that are globally optimal. We investigate the performance of these sparse filters as a function of their sparsity, and compare the convex optimization approach with more traditional alternatives for feature selection. The methodology is applied both to the adaptive matched filter for weak signal detection, and to the Fisher linear discriminant for terrain categorization.
机译:我们调查凸优化的使用来识别高光谱图像中的稀疏线性滤波器。如果其系数的大部分为零,则线性滤波器是稀疏的。稀疏线性滤波器可能是有利的,因为它只需要访问可用光谱通道的子集,并且可以将其应用于比标准线性检测器更便宜的高维数据。找到良好的稀疏滤波器是非虚拟的,因为存在组合大量的离散可能性,从中选择非零系数的最佳子集。但是,通过将最优标准转换为凸损函数,并且通过使用L1罚款,可以获得全局最佳的稀疏解决方案。我们调查这些稀疏过滤器作为其稀疏性的函数的性能,并比较凸优化方法,以更传统的特征选择。该方法应用于自适应匹配滤波器以进行弱信号检测,以及用于地形分类的Fisher线性判别。

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