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Batch-Mode Active-Learning Methods for the Interactive Classification of Remote Sensing Images

机译:遥感图像交互式分类的批量模式主动学习方法

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摘要

This paper investigates different batch-mode active-learning (AL) techniques for the classification of remote sensing (RS) images with support vector machines. This is done by generalizing to multiclass problem techniques defined for binary classifiers. The investigated techniques exploit different query functions, which are based on the evaluation of two criteria: uncertainty and diversity. The uncertainty criterion is associated to the confidence of the supervised algorithm in correctly classifying the considered sample, while the diversity criterion aims at selecting a set of unlabeled samples that are as more diverse (distant one another) as possible, thus reducing the redundancy among the selected samples. The combination of the two criteria results in the selection of the potentially most informative set of samples at each iteration of the AL process. Moreover, we propose a novel query function that is based on a kernel-clustering technique for assessing the diversity of samples and a new strategy for selecting the most informative representative sample from each cluster. The investigated and proposed techniques are theoretically and experimentally compared with state-of-the-art methods adopted for RS applications. This is accomplished by considering very high resolution multispectral and hyperspectral images. By this comparison, we observed that the proposed method resulted in better accuracy with respect to other investigated and state-of-the art methods on both the considered data sets. Furthermore, we derived some guidelines on the design of AL systems for the classification of different types of RS images.
机译:本文研究了使用支持向量机对遥感图像进行分类的不同批处理模式主动学习(AL)技术。这是通过泛化为二进制分类器定义的多类问题技术来完成的。研究的技术利用不同的查询功能,这些功能基于两个标准的评估:不确定性和多样性。不确定性标准与监督算法正确分类考虑的样本的置信度相关,而多样性标准旨在选择一组尽可能不同(彼此相距较远)的未标记样本,从而减少了样本之间的冗余。选定的样本。这两个标准的组合导致在AL过程的每次迭代中选择潜在的信息量最大的样本集。此外,我们提出了一种新颖的查询函数,该函数基于用于评估样本多样性的核聚类技术和一种从每个聚类中选择信息量最大的代表性样本的新策略。在理论上和实验上,将研究和提出的技术与RS应用中采用的最新方法进行比较。这是通过考虑非常高分辨率的多光谱和高光谱图像来实现的。通过这种比较,我们观察到在两个考虑的数据集上,相对于其他调查的方法和最新方法,该方法的准确性更高。此外,我们得出了有关AL系统设计的一些准则,用于对不同类型的RS图像进行分类。

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