Land Cover and Land Use Detection using Semi-Supervised Learning

Fahmida Tasnim Lisa, Md. Zarif Hossain, Sharmin Naj Mou, Shahriar Ivan, M. H. Kabir
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Abstract

Semi-supervised learning (SSL) has made significant strides in the field of remote sensing. Finding a large number of labeled datasets for SSL methods is uncommon, and manually labeling datasets is expensive and time-consuming. Furthermore, accurately identifying remote sensing satellite images is more complicated than it is for conventional images. Class-imbalanced datasets are another prevalent phenomenon, and models trained on these become biased towards the majority classes. This becomes a critical issue with an SSL model’s subpar performance. We aim to address the issue of labeling unlabeled data and also solve the model bias problem due to imbalanced datasets while achieving better accuracy. To accomplish this, we create "artificial" labels and train a model to have reasonable accuracy. We iteratively redistribute the classes through resampling using a distribution alignment technique. We use a variety of class-imbalanced satellite image datasets: EuroSAT, UCM, and WHURS19. On UCM balanced dataset, our method outperforms previous methods MSMatch and FixMatch by 1.21% and 0.6%, respectively. For imbalanced EuroSAT, our method outperforms MSMatch and FixMatch by 1.08% and 1%, respectively. Our approach significantly lessens the requirement for labeled data, consistently outperforms alternative approaches, and resolves the issue of model bias caused by class imbalance in datasets.
基于半监督学习的土地覆盖和土地利用检测
半监督学习(SSL)在遥感领域取得了重大进展。为SSL方法找到大量标记的数据集并不常见,手动标记数据集既昂贵又耗时。此外,准确识别遥感卫星图像比识别常规图像更为复杂。类别不平衡数据集是另一个普遍现象,在这些数据集上训练的模型会偏向大多数类别。这成为导致SSL模型性能低下的一个关键问题。我们的目标是解决标记未标记数据的问题,并解决由于数据集不平衡而导致的模型偏差问题,同时获得更好的准确性。为了做到这一点,我们创建了“人工”标签,并训练了一个模型,使其具有合理的准确性。我们使用分布对齐技术通过重新抽样来迭代地重新分布类。我们使用了多种类别不平衡卫星图像数据集:EuroSAT、UCM和WHURS19。在UCM平衡数据集上,我们的方法比之前的MSMatch和FixMatch方法分别高出1.21%和0.6%。对于不平衡的EuroSAT,我们的方法分别优于MSMatch和FixMatch 1.08%和1%。我们的方法显著减少了对标记数据的需求,始终优于其他方法,并解决了由数据集中的类不平衡引起的模型偏差问题。
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