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Subspace Detection Approaches for Hyperspectral Image Classification

机译:高光谱图像分类的子空间检测方法

摘要

Hyperspectral data provides rich information and is very useful for a range of applications from ground-cover types identification to target detection. With many benefits they also present some challenges including high storage cost, intensive computational load and difficulties in machine assisted interpretation, namely, in classification. The limited number of training samples may cause a significant loss in classification accuracy. This thesis investigates effective and feasible approaches to reduce the dimensionality of the hyperspectral images while keeping the intrinsic structure of the input data intact. The first study is concerned with finding a subspace which consists of the most informative features for reliable hyperspectral image classification. In this study, a hybrid approach which combines both feature extraction and feature selection is proposed. Principal Component Analysis (PCA) is applied first to generate new features from the complete set of the original spectral bands. Feature selection is then performed effectively using a normalized mutual information measure with two constraints to maximize the general relevance and minimize redundancy to the target class identification in the selected subspace. Improvement of the existing nonlinear feature extraction method is undertaken in the second study. In this study, the input features are decorrelated at the first step by applying nonlinear kernel principal component analysis. The spatial properties of the input features are then incorporated to select a subset of features which better reveal object structures and provide good separation among the classes of interest.The third contribution of this study is the evaluation of a number of recent approaches for kernel selection and an improved and computationally efficient approach is proposed. The alignment between the target kernel matrix and input kernel matrix is used to select the kernel parameter(s) for each candidate kernel function. Cross-validation is used at the final stage to search for the best kernel function using the selected kernel parameter(s) for each function. Experiments were carried out on both real and synthetic data. The results show that the proposed approaches provide an improved classification performance.
机译:高光谱数据提供了丰富的信息,对于从地表类型识别到目标检测的一系列应用非常有用。由于具有许多好处,它们还带来了一些挑战,包括高昂的存储成本,密集的计算负荷以及机器辅助解释(即分类)方面的困难。数量有限的训练样本可能会导致分类准确性的重大损失。本文研究了在保持输入数据的固有结构不变的情况下减少高光谱图像维数的有效可行的方法。第一项研究与寻找子空间有关,该子空间包含用于可靠的高光谱图像分类的最有用的信息。在这项研究中,提出了一种结合了特征提取和特征选择的混合方法。首先应用主成分分析(PCA)从原始光谱带的完整集合中生成新特征。然后,使用具有两个约束条件的归一化互信息度量有效地执行特征选择,以使总体相关性最大化并使所选子空间中对目标类别标识的冗余最小化。在第二项研究中,对现有的非线性特征提取方法进行了改进。在这项研究中,第一步通过应用非线性核主成分分析对输入特征进行解相关。然后合并输入特征的空间特性,以选择特征的子集,以更好地揭示对象结构并在感兴趣的类别之间提供良好的分离。这项研究的第三点是对许多最新的内核选择和评估方法进行了评估。提出了一种改进的且计算效率高的方法。目标内核矩阵和输入内核矩阵之间的比对用于为每个候选内核函数选择一个或多个内核参数。在最后阶段使用交叉验证,使用针对每个功能选择的内核参数来搜索最佳内核功能。对真实数据和合成数据都进行了实验。结果表明,所提出的方法提供了改进的分类性能。

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