Department of Computer Engineering, Rochester Institute of Technology, Rochester, NY 14623, USA.
Air Force Research Laboratory, Wright-Patterson Air Force Base, OH 45433, USA.
Sensors (Basel). 2021 Dec 2;21(23):8070. doi: 10.3390/s21238070.
Deep learning grew in importance in recent years due to its versatility and excellent performance on supervised classification tasks. A core assumption for such supervised approaches is that the training and testing data are drawn from the same underlying data distribution. This may not always be the case, and in such cases, the performance of the model is degraded. Domain adaptation aims to overcome the domain shift between the source domain used for training and the target domain data used for testing. Unsupervised domain adaptation deals with situations where the network is trained on labeled data from the source domain and unlabeled data from the target domain with the goal of performing well on the target domain data at the time of deployment. In this study, we overview seven state-of-the-art unsupervised domain adaptation models based on deep learning and benchmark their performance on three new domain adaptation datasets created from publicly available aerial datasets. We believe this is the first study on benchmarking domain adaptation methods for aerial data. In addition to reporting classification performance for the different domain adaptation models, we present t-SNE visualizations that illustrate the benefits of the adaptation process.
深度学习由于其通用性和在监督分类任务上的出色表现,近年来变得越来越重要。这种监督方法的一个核心假设是,训练数据和测试数据来自相同的基础数据分布。但情况并非总是如此,在这种情况下,模型的性能会下降。领域自适应旨在克服训练中使用的源域和测试中使用的目标域数据之间的域转移。无监督领域自适应处理的情况是,网络在源域的标记数据和目标域的未标记数据上进行训练,其目标是在部署时在目标域数据上表现良好。在这项研究中,我们综述了基于深度学习的七种最先进的无监督领域自适应模型,并在三个从公开的航空数据集创建的新的领域自适应数据集上对其性能进行基准测试。我们相信这是第一个针对航空数据基准测试领域自适应方法的研究。除了报告不同领域自适应模型的分类性能外,我们还展示了 t-SNE 可视化,说明了自适应过程的好处。