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Kernel Sparse Multitask Learning for Hyperspectral Image Classification With Empirical Mode Decomposition and Morphological Wavelet-Based Features

机译:基于经验模式分解和基于形态小波的特征的核稀疏多任务学习

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摘要

Recently, many researchers have attempted to exploit spectral–spatial features and sparsity-based hyperspectral image classifiers for higher classification accuracy. However, challenges remain for efficient spectral–spatial feature generation and combination in the sparsity-based classifiers. This paper utilizes the empirical mode decomposition (EMD) and morphological wavelet transform (MWT) to gain spectral–spatial features, which can be significantly integrated by the sparse multitask learning (MTL). In the feature extraction step, the sum of the intrinsic mode functions extracted by an optimized EMD is taken as spectral features, whereas the spatial features are formed by the low-frequency components of one-level MWT. In the classification step, a kernel-based sparse MTL solved by the accelerated proximal gradient is applied to analyze both the spectral and spatial features simultaneously. Experiments are conducted on two benchmark data sets with different spectral and spatial resolutions. It is found that the proposed methods provide more accurate classification results compared to the state-of-the-art techniques with various ratio of training samples.
机译:最近,许多研究人员试图利用光谱空间特征和基于稀疏度的高光谱图像分类器来提高分类精度。然而,在基于稀疏性的分类器中有效的频谱空间特征生成和组合仍然存在挑战。本文利用经验模态分解(EMD)和形态小波变换(MWT)来获得频谱空间特征,稀疏多任务学习(MTL)可以将其显着集成。在特征提取步骤中,将经过优化的EMD提取的固有模式函数之和作为频谱特征,而空间特征则由一级MWT的低频分量形成。在分类步骤中,将通过加速近端梯度求解的基于核的稀疏MTL应用于同时分析光谱和空间特征。实验是在两个具有不同光谱和空间分辨率的基准数据集上进行的。发现与各种比例的训练样本相比,所提出的方法提供了更准确的分类结果。

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