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Gabor Feature-Based Collaborative Representation for Hyperspectral Imagery Classification

机译:基于Gabor特征的高光谱图像分类协同表示

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摘要

Sparse-representation-based classification (SRC) assigns a test sample to the class with minimum representation error via a sparse linear combination of all the training samples, which has successfully been applied to several pattern recognition problems. According to compressive sensing theory, the $l_{1}$-norm minimization could yield the same sparse solution as the $l_{0}$ norm under certain conditions. However, the computational complexity of the $l_{1}$-norm optimization process is often too high for large-scale high-dimensional data, such as hyperspectral imagery (HSI). To make matter worse, a large number of training data are required to cover the whole sample space, which is difficult to obtain for hyperspectral data in practice. Recent advances have revealed that it is the collaborative representation but not the $l_{1}$-norm sparsity that makes the SRC scheme powerful. Therefore, in this paper, a 3-D Gabor feature-based collaborative representation (3GCR) approach is proposed for HSI classification. When 3-D Gabor transformation could significantly increase the discrimination power of material features, a nonparametric and effective $l_{2}$-norm collaborative representation method is developed to calculate the coefficients. Due to the simplicity of the method, the computational cost has been substantially reduced; thus, all the extracted Gabor features can be directly utilized to code the test sample, which conversely makes the $l_{2}$-norm collaborative representation robust to noise and greatly improves the classification accuracy. The exten- ive experiments on two real hyperspectral data sets have shown higher performance of the proposed 3GCR over the state-of-the-art methods in the literature, in terms of both the classifier complexity and generalization ability from very small training sets.
机译:通过所有训练样本的稀疏线性组合,基于稀疏表示的分类(SRC)将测试样本分配给具有最小表示误差的类别,该样本已成功应用于几种模式识别问题。根据压缩感测理论, $ l_ {1} $ -范数最小化可产生与以下相同的稀疏解 $ l_ {0} $ 范数。但是, $ l_ {1} $ -范数优化过程的计算复杂度通常对于大型优化而言过高尺度的高维数据,例如高光谱图像(HSI)。更糟糕的是,需要大量的训练数据来覆盖整个样本空间,这在实践中对于高光谱数据是很难获得的。最近的进展表明,合作稀疏而不是 $ l_ {1} $ -规范稀疏性使SRC方案功能强大。因此,本文提出了一种基于3D Gabor特征的协同表示(3GCR)方法进行HSI分类。当3-D Gabor变换可以显着提高材料特征的辨别力时,采用非参数有效的 $ l_ {2} $ 范式协同表示方法来计算系数。由于该方法的简单性,大大降低了计算成本。因此,所有提取的Gabor特征都可以直接用于对测试样本进行编码,从而使 $ l_ {2} $

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