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Active Versus Semi-supervised Learning Paradigm for the Classification of Remote Sensing Images

机译:主动与半监督学习范例进行遥感图像的分类

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This paper presents a comparative study in order to analyze active learning (AL) and semi-supervised learning (SSL) for the classification of remote sensing (RS) images. The two learning paradigms are analyzed both from the theoretical and experimental point of view. The aim of this work is to identify the advantages and disadvantages of AL and SSL methods, and to point out the boundary conditions on the applicability of these methods with respect to both the number of available labeled samples and the reliability of classification results. In our experimental analysis, AL and SSL techniques have been applied to the classification of both synthetic and real RS data, defining different classification problems starting from different initial training sets and considering different distributions of the classes. This analysis allowed us to derive important conclusion about the use of these classification approaches and to obtain insight about which one of the two approaches is more appropriate according to the specific classification problem, the available initial training set and the available budget for the acquisition of new labeled samples.
机译:本文提出了比较研究,以分析主动学习(AL)和半监督学习(SSL),用于遥感(RS)图像的分类。从理论和实验角度分析了两种学习范式。这项工作的目的是确定AL和SSL方法的优缺点,并指出关于这些方法的适用性关于可用标记样本的数量和分类结果可靠性的边界条件。在我们的实验分析中,AL和SSL技术已经应用于合成和真实RS数据的分类,从不同的初始训练集中和考虑类的不同分布来定义不同的分类问题。此分析允许我们推导出关于这些分类方法的使用的重要结论,并根据具体分类问题,可用的初始培训集和获取新的可用预算和可用预算更为合适的洞察力。标记的样品。

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