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A Novel Semi-supervised Classification Method Based on Class Certainty of Samples

机译:基于样本分类确定性的新型半监督分类方法

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The traditional classification method based on supervised learning classifies remote sensing (RS) images by using sufficient labelled samples. However, the number of labelled samples is limited due to the expensive and time-consuming collection. To effectively utilize the information of unlabelled samples in the learning process, this paper proposes a novel semi-supervised classification method based on class certainty of samples (CCS). First, the class certainty of unlabelled samples obtained based on multi-class SVM is smoothed for robustness. Then, a new semi-supervised linear discriminant analysis (LDA) is presented based on class certainty, which improves the separability of samples in the projection subspace. Finally, the nearest neighbor classifier is adopted to classify the images. The experimental results demonstrate that the proposed method can effectively exploit the information of unlabelled samples and greatly improve the classification effect compared with other state-of-the-art approaches.
机译:基于监督学习的传统分类方法是使用足够的标记样本对遥感图像进行分类。但是,由于收集昂贵且费时,标记样品的数量受到限制。为了有效地利用学习过程中未标记样本的信息,本文提出了一种基于样本类确定性(CCS)的半监督分类方法。首先,基于鲁棒性,对基于多类支持向量机获得的未标记样本的类确定性进行了平滑处理。然后,基于类确定性提出了一种新的半监督线性判别分析(LDA),提高了投影子空间中样本的可分离性。最后,采用最近邻分类器对图像进行分类。实验结果表明,与其他现有方法相比,该方法可以有效地利用未标记样品的信息,大大提高了分类效果。

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