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    This study introduces a novel multimodal fusion mechanism for few-shot learning, integrating visual and textual data to improve category representation. The method enhances model generalization by creating more robust and representative features, outperforming existing approaches.

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    Area of Science:

    • Computer Science
    • Artificial Intelligence
    • Machine Learning

    Background:

    • Few-shot learning (FSL) models struggle with category representativeness due to reliance on limited visual data.
    • Human learning effectively uses multimodal information for robust category feature representation.

    Purpose of the Study:

    • To emulate human multimodal learning for enhanced FSL by integrating visual and textual information.
    • To develop a model capable of acquiring more representative and robust category features from limited samples.

    Main Methods:

    • Introduced a novel visual-semantic fusion selection mechanism (VSFSM) comprising FS-Module and CE-Module.
    • FS-Module fuses and aligns visual and semantic features, performing selection and reconstruction to generate representative features and reduce noise.
    • CE-Module emphasizes category-specific features in query images, reducing noise interference and yielding representative visual-semantic features.

    Main Results:

    • The VSFSM effectively enhances category representativeness and robustness in few-shot learning.
    • The proposed method demonstrates superior classification performance compared to existing approaches.
    • Ablation studies and comparative experiments on multiple datasets validate the model's effectiveness.

    Conclusions:

    • Integrating visual and textual information via the VSFSM significantly improves few-shot learning capabilities.
    • The proposed approach offers a promising direction for developing more generalizable and robust FSL models.
    • The novel objective loss function further optimizes training for enhanced performance.