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UNLABELED SELECTED SAMPLES IN FEATURE EXTRACTION FOR CLASSIFICATION OF HYPERSPECTRAL IMAGES WITH LIMITED TRAINING SAMPLES

机译:具有有限训练样本的特征提取中的未标记选择的样本,用于分类高光谱图像

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Feature extraction plays a key role in hyperspectral images classification. Using unlabeled samples, often unlimitedly available, unsupervised and semisupervised feature extraction methods show better performance when limited number of training samples exists. This paper illustrates the importance of selecting appropriate unlabeled samples that used in feature extraction methods. Also proposes a new method for unlabeled samples selection using spectral and spatial information. The proposed method has four parts including: PCA, prior classification, posterior classification and sample selection. As hyperspectral image passes these parts, selected unlabeled samples can be used in arbitrary feature extraction methods. The effectiveness of the proposed unlabeled selected samples in unsupervised and semisupervised feature extraction is demonstrated using two real hyperspectral datasets. Results show that through selecting appropriate unlabeled samples, the proposed method can improve the performance of feature extraction methods and increase classification accuracy.
机译:特征提取在高光谱图像分类中起着关键作用。使用未标记的样本,通常无限可用,无监督和半培育的特征提取方法在存在有限数量的训练样本时表现出更好的性能。本文说明了选择特征提取方法中使用的适当未标记样品的重要性。还提出了一种使用光谱和空间信息选择未标记的样本选择的新方法。该方法具有四个部分,包括:PCA,先前分类,后分类和样品选择。由于高光谱图像通过这些部件,所选择的未标记样品可用于任意特征提取方法。使用两个真实的高光谱数据集证明了所提出的未标记所选样品在无监督和半体积特征提取中的有效性。结果表明,通过选择适当的未标记样品,所提出的方法可以提高特征提取方法的性能并提高分类精度。

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