Hybrid Contrastive Prototypical Network for Few-Shot Scene Classification
Junjie Zhu, Ke Yang, Chunping Qiu, Mengyuan Dai, Naiyang Guan, Xiaodong Yi
-
SPS
IEEE Members: $11.00
Non-members: $15.00
Few-shot learning has received widespread attention in remote sensing image scene classification. Many existing methods address this challenge by utilizing meta-learning and metric learning, which focus on developing feature extractors that can quickly adapt to novel few-shot scene classification (FSSC) tasks. However, these methods are often insufficient for real-world datasets with class confusion, where there is high inter-class compactness and intra-class diversity. To overcome this issue, we investigate efficient strategies, i.e., meta-learning-based transferable feature representation and contrastive-based prototypical regularization for learning task-adaptive class boundaries for FSSC. Specifically, we designed a combination of Query-vs-Prototype contrastive loss and Prototype-vs-Prototype contrastive loss to normalize the prototypical representation to be more discriminative in a novel FSSC task. Our proposed model is named the Hybrid Contrastive Prototypical Network (HCPNet). Experiment results on three popular datasets under two standard benchmarks, i.e., general few-shot classification and few-shot domain generalization, indicate the effectiveness of the proposed method.