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A novel semisupervised SVM for pixel classification of remote sensing imagery

机译:一种用于遥感图像像素分类的新型半监督支持向量机

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This article introduces a semisupervised support vector machine classification technique that exploits both labeled and unlabeled points for addressing the problem of pixel classification of remote sensing images. The proposed technique is based on applying the margin maximization principle to both labeled and unlabeled patterns. Semisupervised SVM progressively searches a reliable discriminant hyperplane in the high dimensional space through iterative method exploiting both labeled and unlabeled samples. In particular, the dynamic thresholding and successive filtering of the unlabeled set are exploited to find a reliable separating hyperplane. The proposed technique is first demonstrated for six labeled datasets described in terms of feature vectors and then identifying different land cover regions in remote sensing imagery and compared with the standard SVM. Experimental results confirm that employing this learning scheme removes unnecessary points to a great extent from the unlabeled set and increases the accuracy level on the other hand. Comparison is made in terms of accuracy, ROC, AUC and F-measure for the labeled data and quantitative cluster validity indices as well as classified image quality for the image data.
机译:本文介绍了一种半监督支持向量机分类技术,该技术利用标记和未标记的点来解决遥感图像的像素分类问题。所提出的技术基于将余量最大化原理应用于标记和未标记模式两者。半监督SVM通过利用标记和未标记样本的迭代方法,逐步在高维空间中搜索可靠的判别超平面。特别地,利用动态阈值处理和未标记集合的连续滤波来找到可靠的分离超平面。首先针对六个用特征向量描述的标记数据集证明了所提出的技术,然后在遥感影像中识别了不同的土地覆盖区域,并与标准SVM进行了比较。实验结果证实,采用这种学习方案可以在很大程度上消除未标记组中不必要的点,并提高准确性水平。在标记数据的准确性,ROC,AUC和F度量以及定量聚类有效性指标以及图像数据的分类图像质量方面进行了比较。

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