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Semi-supervised classification method for remote sensing images based on support vector machine

机译:基于支持向量机的遥感图像半监督分类方法

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Statistical learning theory-based support vector machine (SVM), which is a supervised learning mechanism, can get good class rate in remote sensing image classification. But manual obtaining of labeled training samples is a much time-consuming work because of the much greater class number of remote sensing image. In addition, there are some subjective factors in manual job by different operators. In order to overcome these shortcomings, a semi-supervised approach has been developed and implemented. The training samples are labeled automatically with fuzzy C-means clustering algorithm. Only the initial clustering centroid for each class is chosen manually. Using these automatically labeled samples, multi-class SVM classifier is trained for remote sensing images classification. The results of the experiment show that the method does upgrade the classification efficiency greatly with practicable class rate.
机译:基于统计学习理论的支持向量机(SVM),即监督学习机制,可以在遥感图像分类中获得良好的课程率。但是由于遥感图像数量大得多,因此手动获得标记的训练样本是一项耗时的工作。此外,不同的运营商手工工作中存在一些主观因素。为了克服这些缺点,已经制定和实施了半监督方法。训练样本以模糊C-Means聚类算法自动标记。只手动选择每个类的初始聚类质心。使用这些自动标记的样本,多级SVM分类器培训用于遥感图像分类。实验结果表明,该方法通过可行的班级率大大提升了分类效率。

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