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MPA: Multimodal Prototype Augmentation for Few-Shot Learning

About

Recently, few-shot learning (FSL) has become a popular task that aims to recognize new classes from only a few labeled examples and has been widely applied in fields such as natural science, remote sensing, and medical images. However, most existing methods focus only on the visual modality and compute prototypes directly from raw support images, which lack comprehensive and rich multimodal information. To address these limitations, we propose a novel Multimodal Prototype Augmentation FSL framework called MPA, including LLM-based Multi-Variant Semantic Enhancement (LMSE), Hierarchical Multi-View Augmentation (HMA), and an Adaptive Uncertain Class Absorber (AUCA). LMSE leverages large language models to generate diverse paraphrased category descriptions, enriching the support set with additional semantic cues. HMA exploits both natural and multi-view augmentations to enhance feature diversity (e.g., changes in viewing distance, camera angles, and lighting conditions). AUCA models uncertainty by introducing uncertain classes via interpolation and Gaussian sampling, effectively absorbing uncertain samples. Extensive experiments on four single-domain and six cross-domain FSL benchmarks demonstrate that MPA achieves superior performance compared to existing state-of-the-art methods across most settings. Notably, MPA surpasses the second-best method by 12.29% and 24.56% in the single-domain and cross-domain setting, respectively, in the 5-way 1-shot setting.

Liwen Wu, Wei Wang, Lei Zhao, Zhan Gao, Qika Lin, Shaowen Yao, Zuozhu Liu, Bin Pu• 2026

Related benchmarks

TaskDatasetResultRank
Few-shot classificationtieredImageNet (test)
Accuracy98.79
282
Image ClassificationMiniImagenet
Accuracy98.87
206
Few-shot Image ClassificationminiImageNet (test)
Accuracy99.07
111
Few-shot Image ClassificationFC100 (test)
Accuracy90.57
69
Few-shot classificationCIFAR FS (test)
Mean Accuracy97.64
51
Image ClassificationCIFAR-FS
Accuracy97.47
28
5-way Few-shot ClassificationCars
Accuracy99.63
27
Image ClassificationtieredImageNet
Accuracy98.57
25
Image ClassificationCross-domain Few-Shot Learning Suite (CUB, Cars, Places, Plantae, EuroSAT, CropDisease) (test)
EuroSAT Accuracy91.77
23
5-way ClassificationCUB
Accuracy99.32
21
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