论文标题
RS-Metanet:深度元学习,用于几次遥感场景分类
RS-MetaNet: Deep meta metric learning for few-shot remote sensing scene classification
论文作者
论文摘要
在大量标记的样品上培训现代深度神经网络是解决遥感的场景分类问题的主要范式,但是仅从几个数据点学习仍然是一个挑战。以样本级别的方式执行了几个射击遥感场景分类的现有方法,从而使学到的功能易于过度拟合单个样本的过度拟合,并且对学习的类别分割表面的概括不足。要解决这个问题,应在任务级别而不是样本级别进行学习。从任务家族中采样的任务学习可以帮助调整学习算法,以在该家庭中采样的新任务上表现良好。因此,我们提出了一种简单但有效的方法,称为RS-Metanet,以解决与现实世界中几乎没有遥控的场景分类有关的问题。一方面,RS-Metanet通过以元方式组织培训来提高样本到任务的学习水平,并且学会了学习一个可以很好地从一系列任务中分类遥感场景的度量空间。我们还提出了一个新的损失函数,称为平衡损失,该功能通过最大化不同类别之间的距离来最大化模型对新样本的概括能力,从而在不同类别的场景中提供更好的线性分割平面,同时确保模型拟合。在三个开放且具有挑战性的遥感数据集,UCMERCED \ _landuse,NWPU-Resisc45和空中图像数据上的实验结果表明,我们提出的RS-Metanet方法在只有1-20个标记样品的情况下实现了最新的结果。
Training a modern deep neural network on massive labeled samples is the main paradigm in solving the scene classification problem for remote sensing, but learning from only a few data points remains a challenge. Existing methods for few-shot remote sensing scene classification are performed in a sample-level manner, resulting in easy overfitting of learned features to individual samples and inadequate generalization of learned category segmentation surfaces. To solve this problem, learning should be organized at the task level rather than the sample level. Learning on tasks sampled from a task family can help tune learning algorithms to perform well on new tasks sampled in that family. Therefore, we propose a simple but effective method, called RS-MetaNet, to resolve the issues related to few-shot remote sensing scene classification in the real world. On the one hand, RS-MetaNet raises the level of learning from the sample to the task by organizing training in a meta way, and it learns to learn a metric space that can well classify remote sensing scenes from a series of tasks. We also propose a new loss function, called Balance Loss, which maximizes the generalization ability of the model to new samples by maximizing the distance between different categories, providing the scenes in different categories with better linear segmentation planes while ensuring model fit. The experimental results on three open and challenging remote sensing datasets, UCMerced\_LandUse, NWPU-RESISC45, and Aerial Image Data, demonstrate that our proposed RS-MetaNet method achieves state-of-the-art results in cases where there are only 1-20 labeled samples.