Litcius/Paper detail

Attention-Based Contrastive Learning for Few-Shot Remote Sensing Image Classification

Yulong Xu, Hanbo Bi, Hongfeng Yu, Wanxuan Lu, Peifeng Li, Xinming Li, Xian Sun

2024IEEE Transactions on Geoscience and Remote Sensing24 citationsDOI

Abstract

Few-shot remote sensing image classification entails identifying images using a limited set of labeled data within remote sensing scenes, holding significant theoretical and practical implications. However, owing to the intricacy and variety of remote sensing images, traditional classification methods usually struggle to extract effective features and learn robust classifiers. To address this issue, an end-to-end metric learning framework named Attention-based Contrastive Learning Network is introduced in this paper. Specifically, the Attention-based Feature Optimization (ABFO) module is employed to align and enhance target image features, highlighting the target region and strengthening the network’s feature extraction capability. Additionally, the Dictionary-based Contrastive Loss (DBCL) module is assigned to optimize image feature vectors, improving category distinguishability and consequently enhancing classification accuracy. The experimental results on five publicly available Few-shot remote sensing classification datasets demonstrate the high competitiveness of our proposed method. Furthermore, it illustrates superior classification accuracy compared to other pertinent Few-shot learning algorithms in the 5-way 1-shot scenario.

Topics & Concepts

Computer scienceArtificial intelligenceFeature extractionContextual image classificationFeature (linguistics)Metric (unit)Pattern recognition (psychology)Image (mathematics)Shot (pellet)Set (abstract data type)Machine learningRemote sensingEconomicsProgramming languagePhilosophyOperations managementGeologyChemistryOrganic chemistryLinguisticsRemote-Sensing Image ClassificationDomain Adaptation and Few-Shot LearningVideo Surveillance and Tracking Methods