A Review on Deep Learning Classifier for Hyperspectral Imaging

Neelam Dahiya, Sartajvir Singh, Sheifali Gupta
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引用次数: 1

Abstract

Nowadays, hyperspectral imaging (HSI) attracts the interest of many researchers in solving the remote sensing problems especially in various specific domains such as agriculture, snow/ice, object detection and environmental monitoring. In the previous literature, various attempts have been made to extract the critical information through hyperspectral imaging which is not possible through multispectral imaging (MSI). The classification in image processing is one of the important steps to categorize and label the pixels based on some specific rules. There are various supervised and unsupervised approaches which can be used for classification. Since the past decades, various classifiers have been developed and improved to meet the requirement of remote sensing researchers. However, each method has its own merits and demerits and is not applicable in all scenarios. Past literature also concluded that deep learning classifiers are more preferable as compared to machine learning classifiers due to various advantages such as lesser training time for model generation, handle complex data and lesser user intervention requirements. This paper aims to perform the review on various machine learning and deep learning-based classifiers for HSI classification along with challenges and remedial solution of deep learning with hyperspectral imaging. This work also highlights the various limitations of the classifiers which can be resolved with developments and incorporation of well-defined techniques.
高光谱成像深度学习分类器研究进展
高光谱成像(HSI)在解决遥感问题方面引起了许多研究者的兴趣,特别是在农业、冰雪、目标检测和环境监测等各个特定领域。在之前的文献中,已经有各种尝试通过高光谱成像来提取多光谱成像(MSI)无法提取的关键信息。图像处理中的分类是根据一定的规则对像素点进行分类和标记的重要步骤之一。有各种监督和非监督方法可用于分类。在过去的几十年里,为了满足遥感研究人员的需求,各种分类器得到了发展和改进。然而,每种方法都有自己的优点和缺点,并不是适用于所有场景。过去的文献也得出结论,与机器学习分类器相比,深度学习分类器更可取,因为它具有各种优势,例如模型生成的训练时间更短,处理复杂数据的时间更短,用户干预要求更少。本文旨在综述各种基于机器学习和深度学习的HSI分类器,以及基于高光谱成像的深度学习面临的挑战和补救方案。这项工作还强调了分类器的各种限制,这些限制可以通过开发和结合定义良好的技术来解决。
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