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SEMI-SUPERVISED LEARNING FOR CLASSFICATION OF CROP AREAS IN NORTH KOREA

机译:半监督朝鲜作物区分类学习

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One of important issues in supervised classification of remote sensing imagery is to collect sufficient numbers of reliable training data. However, to acquire reliable training data requires much cost and time, and may be even impossible in case of classification of inaccessible areas. In this study, iterative classification based on semi-supervised learning using a small number of labelled data is presented to extract reliable training data for classification of inaccessible areas. An initial classification result is first generated by applying a random forest classifier with the small number of training data. The majority vote of random forest classifier is used to extract training candidates with higher certainty measures. The candidates extracted are then used as training data for next supervised classification. To evaluate the applicability of the iterative classification based on semi-supervised learning, a case study of classification of crop areas is carried out using multi-temporal Landsat-8 acquired in Daehongdan, North Korea. From a case study, the accuracy of classification increased as the amount of training data increased through the iterative classification. The semi-supervised approach presented in this study showed a significant improvement of classification accuracy, compared with the classification with a small number of training data. Therefore, it is expected that the iterative classification based on semi-supervised learning could be effectively applied to classify areas in which it is difficult to collect sufficient training data.
机译:遥感图像监督分类中的重要问题之一是收集足够数量的可靠培训数据。然而,为了获得可靠的培训数据,需要大量成本和时间,并且在分类区域的情况下可能是不可能的。在本研究中,提出了基于使用少量标记数据的半监督学习的迭代分类,以提取可访问区域的分类的可靠培训数据。首先通过将随机林分类器应用具有少量训练数据来生成初始分类结果。随机林分类器的大多数投票用于提取具有更高确定性措施的培训候选人。然后将提取的候选者用作下一个监督分类的培训数据。为了评估基于半监督学习的迭代分类的适用性,在朝鲜大城丹的多颞土地地区,进行了作物区域分类的案例研究。根据案例研究,随着培训数据的增加通过迭代分类增加,分类的准确性增加。与少量训练数据的分类相比,本研究中提出的半监督方法显示出分类准确性的显着提高。因此,预计可以有效地应用于基于半监督学习的迭代分类来对其难以收集足够训练数据的区域进行分类。

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