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ABC-Norm Regularization for Fine-Grained and Long-Tailed Image Classification.

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    This study introduces Adaptive Batch Confusion Norm (ABC-Norm), a novel regularization technique for image classification. ABC-Norm effectively addresses fine-grained and long-tailed data distributions simultaneously, enhancing model learning through adversarial confusion.

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    Area of Science:

    • Computer Science
    • Artificial Intelligence
    • Machine Learning

    Background:

    • Real-world image classification faces challenges with complex data distributions, including fine-grained categories and long-tailed class imbalances.
    • Existing methods often address fine-grained or long-tailed issues separately, lacking a unified approach.

    Purpose of the Study:

    • To propose a novel regularization technique, Adaptive Batch Confusion Norm (ABC-Norm), for simultaneously addressing fine-grained and long-tailed data distributions in image classification.
    • To enhance model learning by introducing adversarial loss through adaptive classification confusion.

    Main Methods:

    • Constructing an adaptive batch prediction (ABP) matrix within each training batch.
    • Developing the Adaptive Batch Confusion Norm (ABC-Norm) as a norm-based regularization loss.
    • Coupling ABC-Norm with conventional cross-entropy loss to trigger adversarial learning.

    Main Results:

    • Demonstrated the efficacy of ABC-Norm on benchmark datasets representing real-world, fine-grained, and long-tailed scenarios (CUB-LT, iNaturalist2018, CUB, CAR, AIR, ImageNet-LT).
    • Showcased ABC-Norm's ability to improve model learning effectiveness by introducing adaptive classification confusion.
    • Validated the theoretical connection between ABC-Norm and rank minimization objectives.

    Conclusions:

    • ABC-Norm provides a simple, efficient, and unified solution for simultaneously handling fine-grained and long-tailed image classification problems.
    • The proposed regularization technique strengthens model learning by leveraging adversarial principles.
    • Experimental results confirm the superior performance of ABC-Norm compared to existing methods.