Jaejun Do, Minjung Yoo, Jaeseok Lee, Hyoi Moon, Sunok Kim
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引用次数: 0
摘要
半监督学习是使用少量标记数据和大量未标记数据训练分类模型的好方法。我们将半监督学习应用于一个合成孔径雷达(SAR)图像分类模型,该模型的数据集数量有限,难以创建。为了解决之前的困难,半监督学习使用少量标注数据训练的模型来生成和学习伪标签。此外,很多论文使用单一固定阈值来创建伪标签。在本文中,我们提出了一种半监督合成孔径雷达(SAR)图像分类方法,该方法对每个类别采用不同的阈值,而不是所有类别共享一个固定的阈值,从而在使用少量标记数据集的情况下提高 SAR 分类性能。
Semi-Supervised SAR Image Classification via Adaptive Threshold Selection
Semi-supervised learning is a good way to train a classification model using a small number of labeled and large number of unlabeled data. We applied semi-supervised learning to a synthetic aperture radar(SAR) image classification model with a limited number of datasets that are difficult to create. To address the previous difficulties, semi-supervised learning uses a model trained with a small amount of labeled data to generate and learn pseudo labels. Besides, a lot of number of papers use a single fixed threshold to create pseudo labels. In this paper, we present a semi-supervised synthetic aperture radar(SAR) image classification method that applies different thresholds for each class instead of all classes sharing a fixed threshold to improve SAR classification performance with a small number of labeled datasets.