基于多光谱成像的目标分类算法综述

Zimu Zeng, Weifeng Wang, Wenpeng Zhang
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引用次数: 1

摘要

多光谱成像从目标中提取丰富的光谱信息,极大地扩展了传统成像技术的功能。多光谱成像广泛应用于农业、军事、医学、工业、气象等领域。由于多光谱图像的信息冗余性,需要对多光谱图像进行降维预处理。近年来,研究人员大多采用分类前预处理的方法。基于特征选择、特征变换和特征提取的原理,介绍了常用的降维方法,并讨论了各种降维方法的优缺点。然后,将分类方法分为传统方法和深度学习方法,并讨论了它们的特点和应用前景。通过比较,前者具有成本效益和成熟的理论,而后者具有较强的适应性和较高的分类精度。目前,可以从节省计算资源和有效利用光谱信息的角度对方法进行优化。未来将对传统方法进行改进和综合利用,同时开发适应性和精度更强的新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Target Classification Algorithms Based on Multispectral Imaging: A Review
Multispectral imaging extracts rich spectral information from targets, which greatly expands the function of traditional imaging technology. Multispectral imaging is widely used in agriculture, military, medicine, industry, and meteorology. Because of the information redundancy in multispectral images, it is necessary to reduce the dimension by pre-processing. In recent years, most of the researchers have adopted the methods of pre-processing before classification. Based on the principles of feature selection, feature transformation, and feature extraction, common dimensionality reduction methods are introduced, and the advantages and disadvantages of them are discussed. Afterwards, classification methods are divided into traditional methods and deep learning methods, and their characteristics and application prospect are discussed. Through comparison, the former are cost-effective and have the mature theories, while the latter have strong adaptability and high classification accuracy. At present, methods could be optimized from the perspective of saving computing resources and using spectral information efficiently. In the future, traditional methods will be improved and comprehensively used, while new methods with stronger adaptability and precision will be developed.
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