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Locality-Preserving Discriminant Analysis in Kernel-Induced Feature Spaces for Hyperspectral Image Classification

机译:核特征空间中高光谱图像分类的保局判别分析

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Linear discriminant analysis (LDA) has been widely applied for hyperspectral image (HSI) analysis as a popular method for feature extraction and dimensionality reduction. Linear methods such as LDA work well for unimodal Gaussian class-conditional distributions. However, when data samples between classes are nonlinearly separated in the input space, linear methods such as LDA are expected to fail. The kernel discriminant analysis (KDA) attempts to address this issue by mapping data in the input space onto a subspace such that Fisher's ratio in an intermediate (higher-dimensional) kernel-induced space is maximized. In recent studies with HSI data, KDA has been shown to outperform LDA, particularly when the data distributions are non-Gaussian and multimodal, such as when pixels represent target classes severely mixed with background classes. In this letter, a modified KDA algorithm, i.e., kernel local Fisher discriminant analysis (KLFDA), is studied for HSI analysis. Unlike KDA, KLFDA imposes an additional constraint on the mapping—it ensures that neighboring points in the input space stay close-by in the projected subspace and vice versa. Classification experiments with a challenging HSI task demonstrate that this approach outperforms current state-of-the-art HSI-classification methods.
机译:线性判别分析(LDA)已广泛用于高光谱图像(HSI)分析,这是一种流行的特征提取和降维方法。线性方法(例如LDA)对于单峰高斯类条件分布非常有效。但是,当类之间的数据样本在输入空间中非线性分离时,诸如LDA之类的线性方法可能会失败。内核判别分析(KDA)试图通过将输入空间中的数据映射到子空间上来解决此问题,以使中间(高维)内核诱导空间中的Fisher比率最大化。在最近的有关HSI数据的研究中,已证明KDA优于LDA,尤其是当数据分布为非高斯和多峰时,例如当像素代表目标类别与背景类别严重混合时。在这封信中,研究了一种改进的KDA算法,即内核局部Fisher判别分析(KLFDA),用于HSI分析。与KDA不同,KLFDA对映射施加了额外的约束-它确保输入空间中的相邻点在投影子空间中保持相邻,反之亦然。具有挑战性的HSI任务的分类实验表明,该方法优于当前最新的HSI分类方法。

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