基于半监督循环gan神经网络的最小噪声高光谱图像分类

Q3 Chemistry Journal of Spectral Imaging Pub Date : 2022-03-29 DOI:10.1255/jsi.2022.a2
T. Reddy, J. Harikiran
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引用次数: 2

摘要

高光谱成像(HSI)是一种流行的遥感成像模式,用于收集可见光谱以外的数据。由于分类是高光谱图像处理中最关键的任务,近年来发展了许多分类技术。此外,在许多情况下,从高光谱图像中提取特征是具有挑战性的。HSI的半监督分类是由本文提出的循环GAN方法推动的。由于所提出的HSI分类方法是半监督的,它广泛使用了标记的样本,这些样本很短,并且有许多未标记的图像。研究分两个阶段进行。首先,为了提取光谱-空间特征,采用最小噪声分数。其次,通过循环GANs对半监督方法进行分类。随后,在三种标准的高光谱数据集方法上实现了所提出的体系结构。因此,性能比较是在与最先进的方法相同的领域中进行的。所获得的结果成功地证明了所提出的技术在HSI分类中的优越性。
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A semi-supervised cycle-GAN neural network for hyperspectral image classification with minimum noise fraction
Hyperspectral imaging (HSI) is a popular mode of remote sensing imaging that collects data beyond the visible spectrum. Many classification techniques have been developed in recent years, since classification is the most crucial task in hyperspectral image processing. Furthermore, extracting features from hyperspectral images is challenging in many scenarios. The semi-supervised classification of HSI is motivated by the Cycle-GAN method that has been proposed in this research paper. Since the proposed HSI classification method is semi-supervised, it makes extensive use of the labelled samples, which are short and have numerous unlabelled images. The research is carried out in two phases. First, to extract the spectral–spatial features, the minimum noise fraction is adopted. And, second, the classification of the semi-supervised method is done by the cycle-GANs. Subsequently, the proposed architecture is implemented on three standard hyperspectral dataset methods. As a result, the performance comparison is carried out in the same field as state-of-the-art approaches. The obtained results successfully demonstrate the supremacy of the proposed technique in the classification of HSI.
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来源期刊
Journal of Spectral Imaging
Journal of Spectral Imaging Chemistry-Analytical Chemistry
CiteScore
3.90
自引率
0.00%
发文量
11
审稿时长
22 weeks
期刊介绍: JSI—Journal of Spectral Imaging is the first journal to bring together current research from the diverse research areas of spectral, hyperspectral and chemical imaging as well as related areas such as remote sensing, chemometrics, data mining and data handling for spectral image data. We believe all those working in Spectral Imaging can benefit from the knowledge of others even in widely different fields. We welcome original research papers, letters, review articles, tutorial papers, short communications and technical notes.
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