Joint learning of deep multi-scale features and diversified metrics for hyperspectral image classification

Z. Gong, P. Zhong, Yang Yu, Jiaxin Shan, W. Hu
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引用次数: 0

Abstract

Due to the high spectral resolution and the similarity of some spectrums between different classes, hyperspectral image classification turns out to be an important but challenging task. Researches show the powerful ability of deep learning for hyperspectral image classification. However, the lack of training samples makes it difficult to extract discriminative features and achieve performance as expected. To solve the problem, a multi-scale CNN which can extract multi-scale features is designed for hyperspectral image classification. Furthermore, D-DSML, a diversified metric, is proposed to further improve the representational ability of deep methods. In this paper, a D-DSML-MSCNN method, which jointly learns deep multi-scale features and diversified metrics for hyperspectral image classification, is proposed to take both advantages of D-DSML and MSCNN. Experiments are conducted on Pavia University data to show the effectiveness of our method for hyperspectral image classification. The results show the advantage of our method when compared with other recent results.
基于深度多尺度特征和多样化指标的高光谱图像分类联合学习
由于高光谱图像具有较高的光谱分辨率,且不同类别之间的某些光谱具有相似性,因此高光谱图像分类是一项重要而又具有挑战性的任务。研究表明,深度学习在高光谱图像分类中具有强大的能力。然而,缺乏训练样本使得难以提取判别特征并达到预期的性能。为解决这一问题,设计了一种可提取多尺度特征的多尺度CNN用于高光谱图像分类。此外,为了进一步提高深度方法的表征能力,提出了一种多样化的度量D-DSML。本文结合D-DSML和MSCNN的优点,提出了一种D-DSML-MSCNN方法,该方法联合学习深度多尺度特征和多样化度量用于高光谱图像分类。在帕维亚大学的数据上进行了实验,验证了该方法对高光谱图像分类的有效性。结果表明,与其他最近的研究结果相比,我们的方法具有优势。
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