基于二次互信息的高光谱图像混合分类技术

Arifa I. Champa, Md. Atikur Rahman, S. M. Mahedy Hasan, Md. Fazle Rabbi
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引用次数: 3

摘要

研究人员对“高光谱成像”领域产生了浓厚的兴趣,因为它有许多应用。然而,这项任务的核心动机是高光谱成像在地被物分类问题中的大量实践。但是,高光谱图像(HSI)的高维对研究人员来说似乎是一个威胁。解决这一难题前所未有的可行方法是降维。为此,提出了一种将特征提取方法与特征选择方法相结合的混合降维技术。在这里,主成分分析(PCA),一个著名的技术,已被用于特征提取。此后,从提取的特征中选择特征的方法有互信息(MI)、归一化互信息(nMI)和二次互信息(qMI)三种。随后,将数据输入支持向量机(SVM)。支持向量机是利用核技巧实现的,我们称之为核支持向量机。
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Hybrid Technique for Classification of Hyperspectral Image Using Quadratic Mutual Information
Researchers have found profound interest in the field ‘hyperspectral imaging’ as it has numerous applications. However, the center of motivation for this task has been the immense practice of hyperspectral imaging in ground cover classification problem. But, the high dimensionality of hyperspectral images (HSI) appears to be a menace for researchers. Unprecedented feasible solution to this crux is reduction of dimensionality. Therefore, a hybrid technique has been proposed for dimensionality reduction by combining feature extraction method with feature selection method. Here, Principal Component Analysis (PCA), a renowned technique, has been utilized for feature extraction. Thenceforth, three feature selection methods named Mutual Information (MI), normalized Mutual Information (nMI) and Quadratic Mutual Information (qMI) have been chosen for selecting features from the extracted features. Subsequently, the data have been fed to Support Vector Machine (SVM). SVM is implemented using Kernel trick which we are calling Kernel SVM.
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