Deep Manifold Learning Network for Hyperspectral Image Classification

Zhengying Li, Hong Huang, Chunyu Pu
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Abstract

Deep neural networks have achieved great success in the field of image processing. The feature representation of RGB image can be easily obtained in spatial domain. Different from this, hyperspectral image (HSI) is a kind of high-dimensional data that contains rich spectral information. To explore the manifold structure in HSI, a new deep learning model termed deep manifold learning network (DMLN) was proposed in this paper. In DMLN, a graph based loss function is designed to combine the exploration of manifold structure and the extraction of deep abstract information, which can obtain the discriminant features by iteratively enhancing the compactness of intraclass samples and the separation of interclass samples. Experimental results on two real-world HSI data sets demonstrate the proposed DMLN outperformed some the state-of-the-art methods.
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用于高光谱图像分类的深度流形学习网络
深度神经网络在图像处理领域取得了巨大的成功。RGB图像的特征表示可以很容易地在空间域中得到。与此不同的是,高光谱图像是一种包含丰富光谱信息的高维数据。为了探索HSI中的流形结构,本文提出了一种新的深度学习模型——深度流形学习网络(DMLN)。在DMLN中,设计了一种基于图的损失函数,将流形结构的探索与深度抽象信息的提取相结合,通过迭代增强类内样本的紧密性和类间样本的分离性来获得判别特征。在两个真实HSI数据集上的实验结果表明,所提出的DMLN优于一些最先进的方法。
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