Deep learning for hyperspectral image classification: A survey

IF 13.3 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Vinod Kumar , Ravi Shankar Singh , Medara Rambabu , Yaman Dua
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引用次数: 0

Abstract

Hyperspectral image (HSI) classification is a significant topic of discussion in real-world applications. The prevalence of these applications stems from the precise spectral information offered by each pixelś data in hyperspectral imaging (HS). Classical machine learning (ML) methods face challenges in precise object classification with HSI data complexity. The intrinsic non-linear relationship between spectral information and materials complicates the task. Deep learning (DL) has proven to be a robust feature extractor in computer vision, effectively addressing nonlinear challenges. This validation drives its integration into HSI classification, which proves to be highly effective. This review compares DL approaches to HSI classification, highlighting its superiority over classical ML algorithms. Subsequently, a framework is constructed to analyze current advances in DL-based HSI classification, categorizing studies based on a network using only spectral features, spatial features, or both spectral–spatial features. Moreover, we have explained a few recent advanced DL models. Additionally, the study acknowledges that DL demands a substantial number of labeled training instances. However, obtaining such a large dataset for the HSI classification framework proves to be time and cost-intensive. So, we also explain the DL methodologies, which work well with the limited training data availability. Consequently, the survey introduces techniques aimed at enhancing the generalization performance of DL procedures, offering guidance for the future.

用于高光谱图像分类的深度学习:调查
高光谱图像(HSI)分类是现实世界应用中的一个重要讨论主题。这些应用的普及源于高光谱成像(HS)中每个像素数据所提供的精确光谱信息。经典的机器学习(ML)方法在利用高光谱成像数据复杂性进行精确物体分类时面临挑战。光谱信息与材料之间固有的非线性关系使任务变得更加复杂。深度学习(DL)已被证明是计算机视觉中一种强大的特征提取器,能有效解决非线性挑战。这种验证推动了将其集成到 HSI 分类中,并证明非常有效。本综述比较了用于人脸识别分类的 DL 方法,突出了其优于经典 ML 算法的特点。随后,我们构建了一个框架来分析当前基于 DL 的人机交互分类的进展,根据仅使用频谱特征、空间特征或同时使用频谱和空间特征的网络对研究进行分类。此外,我们还解释了最近几种先进的 DL 模型。此外,该研究还承认,DL 需要大量标注的训练实例。然而,事实证明,为人机交互分类框架获取如此庞大的数据集既费时又费钱。因此,我们还解释了在训练数据有限的情况下也能很好工作的 DL 方法。因此,调查介绍了旨在提高 DL 程序泛化性能的技术,为未来提供了指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computer Science Review
Computer Science Review Computer Science-General Computer Science
CiteScore
32.70
自引率
0.00%
发文量
26
审稿时长
51 days
期刊介绍: Computer Science Review, a publication dedicated to research surveys and expository overviews of open problems in computer science, targets a broad audience within the field seeking comprehensive insights into the latest developments. The journal welcomes articles from various fields as long as their content impacts the advancement of computer science. In particular, articles that review the application of well-known Computer Science methods to other areas are in scope only if these articles advance the fundamental understanding of those methods.
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