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Recent trends in classification of remote sensing data: active and semisupervised machine learning paradigms

机译:遥感数据分类的最新趋势:主动和半监督机器学习范例

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This paper addresses the recent trends in machine learning methods for the automatic classification of remote sensing (RS) images. In particular, we focus on two new paradigms: semisupervised and active learning. These two paradigms allow one to address classification problems in the critical conditions where the available labeled training samples are limited. These operational conditions are very usual in RS problems, due to the high cost and time associated with the collection of labeled samples. Semisupervised and active learning techniques allow one to enrich the initial training set information and to improve classification accuracy by exploiting unlabeled samples or requiring additional labeling phases from the user, respectively. The two aforementioned strategies are theoretically and experimentally analyzed considering SVM-based techniques in order to highlight advantages and disadvantages of both strategies.
机译:本文介绍了用于自动分类遥感(RS)图像的机器学习方法的最新趋势。特别是,我们专注于两个新的范例:半监督学习和主动学习。这两种范式允许人们解决关键条件下的分类问题,在这些条件下,可用的标记训练样本是有限的。这些操作条件在RS问题中非常常见,原因是与标记样品的收集相关的高成本和时间。半监督和主动学习技术允许人们分别利用未标记的样本或需要用户额外的标记阶段来丰富初始训练集信息并提高分类准确性。考虑到基于SVM的技术,从理论上和实验上对上述两种策略进行了分析,以突出两种策略的优缺点。

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