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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Semisupervised Subspace-Based DNA Encoding and Matching Classifier for Hyperspectral Remote Sensing Imagery
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Semisupervised Subspace-Based DNA Encoding and Matching Classifier for Hyperspectral Remote Sensing Imagery

机译:基于半监督的基于子空间的DNA编码和匹配分类器

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摘要

Hyperspectral remote sensing images, which are characterized by their high dimensionality, provide us with the capability to accurately identify objects on the ground. They can also be used to identify subclasses of objects. However, these subclasses are usually embedded in different subspaces due to the complex distribution of pixels in the feature space. In the literature, few hyperspectral image classification methods can take both the subclass and subspace into consideration at the same time. Motivated by the fact that natural DNA can distinguish biological subspecies (subclasses in hyperspectral images) using critical DNA fragments (subspaces in hyperspectral images), a semisupervised subspace-based DNA encoding and matching classifier for hyperspectral remote sensing imagery (SSDNA) is proposed in this paper. First, in the process of DNA encoding, the hyperspectral remote sensing image is transformed into a DNA cube, in which the first-order spectral curve of the hyperspectral remote sensing image is utilized in order to take the gradient information of the spectral curve into consideration. Second, in the process of DNA optimization, evolutionary algorithms are used to obtain the best DNA library of the typical objects, which includes the following: 1) A multicenter individual representation is designed in order to consider the existence of subclasses in the hyperspectral remote sensing image; 2) the unlabeled samples are utilized in the process of population initialization and fitness calculation to enhance the diversity of the population and the generalization of the classification performance; and 3) the different classes are embedded in different subspaces. A semisupervised technique is used to extract the subspaces, including the global subspace for all the classes and the local subspace for each class. Three hyperspectral data sets were tested and confirm that SSDNA performs better than the other supervised or semisupervised classifiers.
机译:高光谱遥感图像以其高维度为特征,为我们提供了准确识别地面物体的能力。它们也可以用于识别对象的子类。但是,由于特征空间中像素的复杂分布,这些子类通常嵌入在不同的子空间中。在文献中,很少有高光谱图像分类方法可以同时考虑子类和子空间。出于天然DNA可以利用关键DNA片段(高光谱图像中的子空间)区分生物亚种(高光谱图像中的子类)的事实,本文提出了一种基于半监督的基于亚空间的DNA编码和匹配分类器,用于高光谱遥感图像(SSDNA)。纸。首先,在DNA编码过程中,将高光谱遥感图像转换成DNA立方体,利用高光谱遥感图像的一阶光谱曲线来考虑光谱曲线的梯度信息。 。其次,在DNA优化过程中,使用进化算法获得典型对象的最佳DNA库,其中包括:1)设计多中心个体表示法,以考虑高光谱遥感中子类的存在。图片; 2)在种群初始化和适应度计算过程中使用未标记的样本,以增强种群的多样性和分类性能的泛化; 3)不同的类被嵌入到不同的子空间中。半监督技术用于提取子空间,包括所有类的全局子空间和每个类的局部子空间。测试了三个高光谱数据集,并确认SSDNA的性能优于其他监督或半监督分类器。

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