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Combining active and metric learning for hyperspectral image classification

机译:基于高光谱图像分类的主动和度量学习

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Classification of hyperspectral remote sensing images is affected by two main problems: high dimensionality of the acquired signatures and scarce availability of labeled samples. Learning a low dimensional manifold and active learning represent two approaches that have been investigated in the literature to mitigate these effects. However they are usually applied independently from each other. In this paper we propose a method in which feature extraction and active learning are combined. In particular, a new reduced feature space is learned by large margin nearest neighbor (LMNN), a metric learning strategy that takes advantage of labeled information. The method is applied in conjunction with k-nearest neighbor (k-NN) classification, for which a new sample selection strategy is proposed. Experiments on a real hyperspectral dataset confirm the effectiveness of the proposed method.
机译:高光谱遥感图像的分类受到两个主要问题的影响:获得的签名的高维度和标记样本的稀缺可用性。学习低维歧管和主动学习代表了在文献中研究的两种方法,以减轻这些效果。然而,它们通常彼此独立应用。在本文中,我们提出了一种特征提取和主动学习的方法。特别地,通过大型裕度最近的邻居(LMNN)学习了新的减少的特征空间,该公制学习策略利用标记的信息。该方法与K最近邻(K-NN)分类一起应用,提出了一种新的样本选择策略。实验对实际高光谱数据集确认了该方法的有效性。

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