4.7 Article

RS-MetaNet: Deep Metametric Learning for Few-Shot Remote Sensing Scene Classification

Journal

IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING
Volume 59, Issue 8, Pages 6983-6994

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TGRS.2020.3027387

Keywords

Few-shot learning; metatask; metric learning; remote sensing classification

Funding

  1. National Natural Science Foundation of China [41571397, 41871364, 41671357, 41871302, 41871276]

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Training modern deep neural networks on large labeled datasets is effective for scene classification, but learning from a few data points remains challenging. RS-MetaNet proposes a method of organizing training at the task level, achieving state-of-the-art results in few-shot remote sensing scene classification.
Y 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 a 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 metaway, 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 data sets, 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 similar to 20 labeled samples.

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