子类识别的半监督学习算法

Ranga Raju Vatsavai, S. Shekhar, B. Bhaduri
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引用次数: 6

摘要

在许多实际情况下,收集一个领域中所有可用类的标记样本是不可行的。特别是在遥感图像的监督分类中,不可能在大的地理区域内收集所有主题类的地面真实信息。因此,分析人员经常收集汇总类的标签(例如,森林、农业、城市)。在本文中,我们提出了一种新的学习方案,可以从用户给定的聚合类中自动学习子类(如硬木,针叶树)。我们将每个聚集类建模为有限高斯混合,而不是经典的每类单峰高斯假设。自动估计每个有限高斯混合中的分量数。然后使用半监督学习来识别子类,每个子类使用很少的标记样本和大量未标记样本。实际遥感图像分类实验结果表明,该方法不仅提高了总体分类的精度,而且还能准确识别子分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Semi-supervised Learning Algorithm for Recognizing Sub-classes
In many practical situations it is not feasible to collect labeled samples for all available classes in a domain. Especially in supervised classification of remotely sensed images it is impossible to collect ground truth information over large geographic regions for all thematic classes. As a result often analysts collect labels for aggregate classes (e.g., Forest, Agriculture, Urban). In this paper we present a novel learning scheme that automatically learns sub-classes (e.g., Hardwood, Conifer) from the user given aggregate classes. We model each aggregate class as finite Gaussian mixture instead of classical assumption of unimodal Gaussian per class. The number of components in each finite Gaussian mixture are automatically estimated. A semi-supervised learning is then used to recognize sub-classes by utilizing very few labeled samples per each sub-class and a large number of unlabeled samples. Experimental results on real remotely sensed image classification showed not only improved accuracy in aggregate class classification but the proposed method also recognized sub-classes accurately.
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