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Model-Agnostic Multi-Domain Learning with Domain-Specific Adapters for Action Recognition

Kazuki Omi, Jun Kimata, Toru Tamaki

2022IEICE Transactions on Information and Systems10 citationsDOIOpen Access PDF

Abstract

In this paper, we propose a multi-domain learning model for action recognition. The proposed method inserts domain-specific adapters between layers of domain-independent layers of a backbone network. Unlike a multi-head network that switches classification heads only, our model switches not only the heads, but also the adapters for facilitating to learn feature representations universal to multiple domains. Unlike prior works, the proposed method is model-agnostic and doesn't assume model structures unlike prior works. Experimental results on three popular action recognition datasets (HMDB51, UCF101, and Kinetics-400) demonstrate that the proposed method is more effective than a multi-head architecture and more efficient than separately training models for each domain.

Topics & Concepts

Computer scienceDomain (mathematical analysis)Feature (linguistics)Artificial intelligenceAction recognitionAction (physics)Head (geology)Pattern recognition (psychology)Machine learningGeomorphologyMathematical analysisGeologyQuantum mechanicsLinguisticsPhysicsClass (philosophy)MathematicsPhilosophyHuman Pose and Action RecognitionMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot Learning
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