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Spatial Revising Variational Autoencoder-Based Feature Extraction Method for Hyperspectral Images

机译:基于空间修改变分性的高光谱图像的特征提取方法

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摘要

Hyperspectral image with high dimensionality always increases the computational consumption, which challenges image processing. Deep learning models have achieved extraordinary success in various image processing domains, which are effective to improve classification performance. There remain considerable challenges in fully extracting abundant spectral information, such as the combination of spatial and spectral information. In this article, a novel unsupervised hyperspectral feature extraction architecture based on spatial revising variational autoencoder (AE) ( $U_{ext {Hfe}}ext {SRVAE}$ ) is proposed. The core concept of this method is extracting spatial features via designed networks from multiple aspects for the revision of the obtained spectral features. Multilayer encoder extracts spectral features, and then, latent space vectors are generated from the obtained means and standard deviations. Spatial features based on local sensing and sequential sensing are extracted using multilayer convolutional neural networks and long short-term memory networks, respectively, which can revise the obtained mean vectors. Besides, the proposed loss function guarantees the consistency of the probability distributions of various latent spatial features, which obtained from the same neighbor region. Several experiments are conducted on three publicly available hyperspectral data sets, and the experimental results show that $U_{ext {Hfe}}ext {SRVAE}$ achieves better classification results compared with comparison methods. The combination of spatial feature extraction models and deep AE models is designed based on the unique characteristics of hyperspectral images, which contributes to the performance of this method.
机译:具有高维度的高光谱图像总是增加计算消耗,这是挑战图像处理。深度学习模型在各种图像处理域中取得了非常成功,这有效改善分类性能。完全提取丰富的光谱信息,例如空间和光谱信息的组合,仍然存在相当大的挑战。在本文中,基于空间修改变形AutioCoder(AE)的新型无监督的超光特征提取架构(<内联 - 公式XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink = “http://www.w3.org/1999/xlink”> $ u _ { text {hfe}} text {srvae} $ $ u _ { text {hfe}} text {srvae} $ 与比较方法相比,达到更好的分类结果。基于高光谱图像的独特特性设计了空间特征提取模型和深AE模型的组合,这有助于这种方法的性能。

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