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Attentive Feature Augmentation for Long-Tailed Visual Recognition

Weiqiu Wang, Zhicheng Zhao, Pingyu Wang, Fei Su, Hongying Meng

2022IEEE Transactions on Circuits and Systems for Video Technology35 citationsDOI

Abstract

Deep neural networks have achieved great success on many visual recognition tasks. However, training data with a long-tailed distribution dramatically degenerates the performance of recognition models. In order to relieve this imbalance problem, an effective Long-Tailed Visual Recognition (LTVR) framework is proposed based on learned balance and robust features under long-tailed distribution circumstances. In this framework, a plug-and-play Attentive Feature Augmentation (AFA) module is designed to mine class-related and variation-related features of original samples via a novel hierarchical channel attention mechanism. Then, those features are aggregated to synthesize fake features to cope with the imbalance of the original dataset. Moreover, a Lay-Back Learning Schedule (LBLS) is developed to ensure a good initialization of feature embedding. Extensive experiments are conducted with a two-stage training method to verify the effectiveness of the proposed framework on both feature learning and classifier rebalancing in the long-tailed image recognition task. Experimental results show that, when trained with imbalanced datasets, the proposed framework achieves superior performance over the state-of-the-art methods.

Topics & Concepts

Computer scienceInitializationArtificial intelligencePattern recognition (psychology)Feature (linguistics)EmbeddingClassifier (UML)Feature extractionMachine learningPhilosophyLinguisticsProgramming languageDomain Adaptation and Few-Shot LearningRetinal Imaging and AnalysisAdvanced Neural Network Applications
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