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Graph-based semi-supervised learning with GPU on small sample sized hyperspectral images

机译:使用GPU在小样本大小的高光谱图像上进行基于图的半监督学习

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In hyperspectral images, the creation of ground-truth data for supervised learning methods is costly in terms of computation cost and time. In addition, the number of labeled data and the quality of labeled training data affects the success of the classification. as a solution to this problem, a graph-based semi-supervised hyperspectral image classifier is proposed in this study. The system was developed on graphics processing unit (GPU) to get rid of the high processing cost of semi-supervised learning. In addition, subtractive clustering is proposed as a new approach to select labeled samples for semi-supervised learning. The results of the system tests with public data sets showed that the classification performance of semi-supervised learning can be close to supervised learning with a small number of labeled data.
机译:在高光谱图像中,用于监督学习方法的地面真相数据的创建在计算成本和时间上都是昂贵的。另外,标记数据的数量和标记训练数据的质量会影响分类的成功。为解决这一问题,本文提出了一种基于图的半监督高光谱图像分类器。该系统是在图形处理单元(GPU)上开发的,从而消除了半监督学习的高处理成本。此外,提出了减法聚类作为选择标记样本进行半监督学习的新方法。使用公开数据集进行系统测试的结果表明,半监督学习的分类性能可以与带有少量标记数据的监督学习接近。

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