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Boosting Multi-Label Image Classification with Complementary Parallel Self-Distillation

Jiazhi Xu, Sheng Huang, Fengtao Zhou, Luwen Huangfu, Daniel Zeng, Bo Liu

2022Proceedings of the Thirty-First International Joint Conference on Artificial Intelligence17 citationsDOIOpen Access PDF

Abstract

Multi-Label Image Classification (MLIC) appro-aches usually exploit label correlations to achieve good performance. However, emphasizing correlation like co-occurrence may overlook discriminative features and lead to model overfitting. In this study, we propose a generic framework named Parallel Self-Distillation (PSD) for boosting MLIC models. PSD decomposes the original MLIC task into several simpler MLIC sub-tasks via two elaborated complementary task decomposition strategies named Co-occurrence Graph Partition (CGP) and Dis-occurrence Graph Partition (DGP). Then, the MLIC models of fewer categories are trained with these sub-tasks in parallel for respectively learning the joint patterns and the category-specific patterns of labels. Finally, knowledge distillation is leveraged to learn a compact global ensemble of full categories with these learned patterns for reconciling the label correlation exploitation and model overfitting. Extensive results on MS-COCO and NUS-WIDE datasets demonstrate that our framework can be easily plugged into many MLIC approaches and improve performances of recent state-of-the-art approaches. The source code is released at https://github.com/Robbie-Xu/CPSD.

Topics & Concepts

OverfittingDiscriminative modelBoosting (machine learning)Computer scienceArtificial intelligenceMachine learningDistillationPattern recognition (psychology)Partition (number theory)ExploitContextual image classificationGraphImage (mathematics)Theoretical computer scienceMathematicsArtificial neural networkCombinatoricsOrganic chemistryChemistryComputer securityText and Document Classification TechnologiesMachine Learning and Data ClassificationDomain Adaptation and Few-Shot Learning