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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >A Novel Approach to the Selection of Spatially Invariant Features for the Classification of Hyperspectral Images With Improved Generalization Capability
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A Novel Approach to the Selection of Spatially Invariant Features for the Classification of Hyperspectral Images With Improved Generalization Capability

机译:具有改进泛化能力的高光​​谱图像分类空间不变特征选择的新方法

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摘要

This paper presents a novel approach to feature selection for the classification of hyperspectral images. The proposed approach aims at selecting a subset of the original set of features that exhibits at the same time high capability to discriminate among the considered classes and high invariance in the spatial domain of the investigated scene. This approach results in a more robust classification system with improved generalization properties with respect to standard feature-selection methods. The feature selection is accomplished by defining a multiobjective criterion function made up of two terms: 1) a term that measures the class separability and 2) a term that evaluates the spatial invariance of the selected features. In order to assess the spatial invariance of the feature subset, we propose both a supervised method (which assumes that training samples acquired in two or more spatially disjoint areas are available) and a semisupervised method (which requires only a standard training set acquired in a single area of the scene and takes advantage of unlabeled samples selected in portions of the scene spatially disjoint from the training set). The choice for the supervised or semisupervised method depends on the available reference data. The multiobjective problem is solved by an evolutionary algorithm that estimates the set of Pareto-optimal solutions. Experiments carried out on a hyperspectral image acquired by the Hyperion sensor on a complex area confirmed the effectiveness of the proposed approach.
机译:本文提出了一种新的特征选择方法,用于高光谱图像的分类。所提出的方法旨在选择原始特征集的子集,该子集同时具有在所研究场景的空间域中区分所考虑的类别和高度不变性的高能力。这种方法导致了一个更健壮的分类系统,相对于标准特征选择方法,它具有改进的泛化特性。通过定义由两个术语组成的多目标标准函数来完成特征选择:1)一个用于测量类可分离性的术语,以及2)一个用于评估所选特征的空间不变性的术语。为了评估特征子集的空间不变性,我们提出了一种监督方法(假设在两个或更多个空间不相交的区域中获取的训练样本可用)和一种半监督方法(仅需要在一个或多个空间中获取的标准训练集)。场景的单个区域,并利用在场景中与训练集空间不相交的部分中选择的未标记样本)。监督或半监督方法的选择取决于可用的参考数据。多目标问题通过一种进化算法来解决,该算法可以估计一组帕累托最优解。对Hyperion传感器在复杂区域上获取的高光谱图像进行的实验证实了该方法的有效性。

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