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One-class Classifier Ensemble based Enhanced Semisupervised Classification of Hyperspectral Remote Sensing Images

机译:基于一类分类器集合的高光谱遥感图像增强半监督分类

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The scarcity of labelled training data as well as uneven class distribution among the limitedly available labelled data have posed a critical issue in supervised hyperspectral remote sensing image classification. Semisupervised methods can be an easy solution to this critical problem. However, traditional self-training based semi-supervised approaches often give poor classification results in high dimensional multiclass classification problems. This paper proposes a novel efficient one-class classifier ensemble based self-training approach for semisupervised classification of hyperspectral remote sensing images with limited labelled data. The proposed method initially trains an ensemble of locally specialized one-class classifiers independently by using the dimensionally reduced spectral feature vectors of the available labelled samples. The trained one-class classifiers are then used to extend the labelled set by iterative addition of high quality unlabelled samples to it through the exploitation of both spectral and spatial information. The classifiers are then retrained with the extended dataset in a batchwise fashion. The procedure is repeated until an adequate quantity of labelled samples are generated. Finally, a supervised multiclass classifier is trained on the extended dataset for the final image classification purpose. Experimental results on two benchmark hyperspectral images verify the effectiveness of the proposed method over supervised and traditional self-training based semisupervised pixelwise classification in terms of different classification measures.
机译:标记训练数据的稀缺性以及有限可用标记数据之间的类分布不均匀,在有监督的高光谱遥感图像分类中提出了一个关键问题。半监督方法可以很容易地解决这个关键问题。然而,传统的基于自我训练的半监督方法通常在高维多类分类问题中给出较差的分类结果。本文提出了一种基于有效的一类分类器集成的自训练方法,用于标签数据有限的高光谱遥感图像的半监督分类。所提出的方法首先通过使用可用标记样本的降维谱特征向量来独立地训练一组本地专用的一类分类器。然后,经过训练的一类分类器可通过对频谱和空间信息的利用,通过向其反复添加高质量的未标记样本来扩展标记集。然后,使用扩展数据集以分批方式对分类器进行重新训练。重复该过程,直到产生足够数量的标记样品为止。最后,在扩展数据集上训练有监督的多类分类器,以实现最终的图像分类。在两个基准高光谱图像上的实验结果证明了该方法在监督和传统的基于自训练的半监督像素逐级分类方面的有效性,并且采用了不同的分类方法。

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