A Few-Shot Semi-Supervised Learning Method for Remote Sensing Image Scene Classification

Yuxuan Zhu, Erzhu Li, Zhigang Su, Wei Liu, A. Samat, Yu Liu
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Abstract

Few-shot scene classification methods aim to obtain classification discriminative ability from few labeled samples and has recently seen substantial advancements. However, the current few-shot learning approaches still suffer from overfitting due to the scarcity of labeled samples. To this end, a few-shot semi-supervised method is proposed to address this issue. Specifically, semi-supervised learning method is used to increase target domain samples; then we train multiple classification models using the augmented samples. Finally, we perform decision fusion of the results obtained from the multiple models to accomplish the image classification task. According to the experiments conducted on two real few-shot remote sensing scene datasets, our proposed method achieves significantly higher accuracy (approximately 1.70% to 4.33%) compared to existing counterparts.
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遥感图像场景分类的少镜头半监督学习方法
少镜头场景分类方法旨在从少量标注样本中获得分类判别能力,最近取得了长足的进步。然而,由于标注样本的稀缺,目前的少镜头学习方法仍然存在过拟合问题。为此,我们提出了一种少点半监督方法来解决这一问题。具体来说,我们使用半监督学习方法来增加目标域样本,然后使用增加的样本训练多个分类模型。最后,对多个模型的结果进行决策融合,完成图像分类任务。根据在两个真实的少镜头遥感场景数据集上进行的实验,与现有的同类方法相比,我们提出的方法取得了明显更高的准确率(约为 1.70% 到 4.33%)。
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