基于渐进式无监督深度迁移学习的卫星图像森林映射

Nouman Ahmed, Sudipan Saha, M. Shahzad, M. Fraz, Xiao Xiang Zhu
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引用次数: 2

摘要

自动森林制图对于了解我们的森林在生态系统中起着关键作用非常重要。然而,由于难以收集显示大类内变化的标记森林图像,阻碍了森林制图的努力。近年来,无监督学习在利用有限的标记数据方面表现出了良好的能力。基于此,我们提出了一种渐进式无监督深度迁移学习方法用于森林映射。提出的方法利用预先训练的模型,随后在目标森林域上进行微调。我们提出了两种不同的微调机制,一种是通过联合学习CNN的参数和基于k-means的聚类分配结果特征,在完全无监督的情况下工作;另一种是通过利用提取的基于最近邻的伪标签,在半监督的情况下工作。利用BigEarthNet标签训练的相关基础模型,在公开可用的EuroSAT数据集上对提出的渐进式方案进行了评估。结果表明,与无监督基线相比,该方法大大提高了森林区域分类精度,接近监督分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Progressive Unsupervised Deep Transfer Learning for Forest Mapping in Satellite Image
Automated forest mapping is important to understand our forests that play a key role in ecological system. However, efforts towards forest mapping is impeded by difficulty to collect labeled forest images that show large intraclass variation. Recently unsupervised learning has shown promising capability when exploiting limited labeled data. Motivated by this, we propose a progressive unsupervised deep transfer learning method for forest mapping. The proposed method exploits a pre-trained model that is subsequently fine-tuned over the target forest domain. We propose two different fine-tuning mechanism, one works in a totally unsupervised setting by jointly learning the parameters of CNN and the k-means based cluster assignments of the resulting features and the other one works in a semi-supervised setting by exploiting the extracted knearest neighbor based pseudo labels. The proposed progressive scheme is evaluated on publicly available EuroSAT dataset using the relevant base model trained on BigEarthNet labels. The results show that the proposed method greatly improves the forest regions classification accuracy as compared to the unsupervised baseline, nearly approaching the supervised classification approach.
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