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A Positive and Unlabeled Learning Algorithm for One-Class Classification of Remote-Sensing Data

机译:遥感数据的一类分类的正向和非标记学习算法

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摘要

In remote-sensing classification, there are situations when users are only interested in classifying one specific land-cover type, without considering other classes. These situations are referred to as one-class classification. Traditional supervised learning is inefficient for one-class classification because it requires all classes that occur in the image to be exhaustively assigned labels. In this paper, we investigate a new positive and unlabeled learning (PUL) algorithm, applying it to one-class classifications of two scenes of a high-spatial-resolution aerial photograph. The PUL algorithm trains a classifier on positive and unlabeled data, estimates the probability that a positive training sample has been labeled, and generates binary predictions for test samples using an adjusted threshold. Experimental results indicate that the new algorithm provides high classification accuracy, outperforming the biased support-vector machine (SVM), one-class SVM, and Gaussian domain descriptor methods. The advantages of the new algorithm are that it can use unlabeled data to help build classifiers, and it requires only a small set of positive data to be labeled by hand. Therefore, it can significantly reduce the effort of assigning labels to training data without losing predictive accuracy.
机译:在遥感分类中,有些情况下,用户只对分类一种特定的土地覆盖类型感兴趣,而没有考虑其他分类。这些情况称为一类分类。传统的监督学习对于一类分类效率低下,因为它要求将图像中出现的所有类都详尽地分配给标签。在本文中,我们研究了一种新的正向和非标记学习(PUL)算法,将其应用于高空间分辨率航空照片的两个场景的一类分类。 PUL算法在阳性和未标记数据上训练分类器,估计已标记阳性训练样本的概率,并使用调整后的阈值生成测试样本的二进制预测。实验结果表明,该算法具有较高的分类精度,优于有偏支持向量机,一类支持向量机和高斯域描述符方法。新算法的优点在于,它可以使用未标记的数据来帮助构建分类器,并且只需要手动标记少量阳性数据即可。因此,它可以显着减少为训练数据分配标签的工作而不会丢失预测准确性。

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