支持向量机在有限数据集高光谱数据分类中的高性能研究

Q4 Earth and Planetary Sciences
Amir Salimi, M. Ziaii, M. H. Zadeh, A. Amiri, S. Karimpouli
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引用次数: 2

摘要

在区域尺度上找矿,利用遥感资料识别和分类热液蚀变带是一种常用的策略。由于光谱波段数量多,高光谱数据的分类可能会受到休斯现象的负面影响。处理休斯问题的一种实用方法是准备大量的训练样本,直到训练集的大小足够,并且与光谱带的数量相当。为了收集足够的地面真值实例作为训练样本,需要进行耗时且成本高的地面调查操作。在这种情况下,准备足够的现场样本不是一件容易的事情,使用一个合适的分类器,可以正确地处理有限的训练数据集是非常可取的。在监督分类方法中,支持向量机被认为是一种很有前途的分类器,即使在有限的训练数据下也能产生可接受的结果。本文将支持向量机用于Darrehzar地区蚀变带分类时,对该能力进行评价。为此,仅利用研究区的12个采样实例对165个可用光谱波段的Hyperion高光谱数据进行分类。结果表明,通过对支持向量机参数C和σ的精确调整,支持向量机可以在野外数据样本不足的情况下成功识别蚀变带。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High performance of the support vector machine in classifying hyperspectral data using a limited dataset
To prospect mineral deposits at regional scale, recognition and classification of hydrothermal alteration zones using remote sensing data is a popular strategy. Due to the large number of spectral bands, classification of the hyperspectral data may be negatively affected by the Hughes phenomenon. A practical way to handle the Hughes problem is preparing a lot of training samples until the size of the training set is adequate and comparable with the number of the spectral bands. In order to gather adequate ground truth instances as training samples, a time-consuming and costly ground survey operation is needed. In this situation that preparing enough field samples is not an easy task, using an appropriate classifier which can properly work with a limited training dataset is highly desirable. Among the supervised classification methods, the Support Vector Machine is known as a promising classifier that can produce acceptable results even with limited training data. Here, this capability is evaluated when the SVM is used to classify the alteration zones of Darrehzar district. For this purpose, only 12 sampled instances from the study area are utilized to classify Hyperion hyperspectral data with 165 useable spectral bands. Results demonstrate that if parameters of the SVM, namely C and σ, are accurately adjusted, the SVM can be successfully used to identify alteration zones when field data samples are not available enough.
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来源期刊
International Journal of Mining and Geo-Engineering
International Journal of Mining and Geo-Engineering Earth and Planetary Sciences-Geotechnical Engineering and Engineering Geology
CiteScore
0.80
自引率
0.00%
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审稿时长
12 weeks
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