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Learning with transductive SVM for semisupervised pixel classification of remote sensing imagery

机译:利用转导SVM学习进行遥感影像的半监督像素分类

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摘要

Land cover classification using remotely sensed data requires robust classification methods for the accurate mapping of complex land cover area of different categories. In this regard, support vector machines (SVMs) have recently received increasing attention. However, small number of training samples remains a bottleneck to design suitable supervised classifiers. On the other hand, adequate number of unlabeled data is available in remote sensing images which can be employed as additional source of information about margins. To fully leverage all of the precious unlabeled data, integration of filtering in a transductive SVM is proposed. Using two labeled image datasets of small size and two large unlabeled image datasets, the effectiveness of the proposed method is explored. Experimental results show that the proposed technique achieves average overall accuracies of around 4.5-7.8%, 0.8-2.6% and 0.9-2.2% more than the standard inductive SVM (ISVM), progressive transductive SVM (PTSVM) and low density separation (LDS) classifiers, respectively on larger domains in case of labeled datasets. Using image datasets, visual interpretation from the classified images as well as the segmentation quality reveal that the proposed method can efficiently filter informative data from the unlabeled samples.
机译:使用遥感数据进行土地覆被分类需要鲁棒的分类方法,以准确绘制不同类别​​的复杂土地覆被面积。在这方面,支持向量机(SVM)最近受到越来越多的关注。然而,少量训练样本仍然是设计合适的监督分类器的瓶颈。另一方面,在遥感图像中可以使用足够数量的未标记数据,这些数据可以用作有关边距的附加信息源。为了充分利用所有珍贵的未标记数据,提出了将过滤集成在转导SVM中的方法。使用两个小尺寸的标记图像数据集和两个大的未标记图像数据集,探讨了该方法的有效性。实验结果表明,与标准的感应SVM(ISVM),渐进式转导SVM(PTSVM)和低密度分离(LDS)相比,该技术可实现平均总体准确度分别高4.5-7.8%,0.8-2.6%和0.9-2.2%如果是带标签的数据集,则分别在较大的域上使用分类器。使用图像数据集,从分类图像的视觉解释以及分割质量表明,该方法可以有效地过滤未标记样本中的信息数据。

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