Publication | Closed Access
A Unified Framework for Multimodal Domain Adaptation
61
Citations
44
References
2018
Year
Unknown Venue
Natural Language ProcessingMultimodal LlmCognitive ScienceImage AnalysisMachine LearningData ScienceDomain Adaptation MethodsPattern RecognitionEngineeringDomain AdaptationMultimodal Domain AdaptationAffective ComputingMultimodal LearningMultimodal Signal ProcessingMulti-task LearningDeep LearningSocial SciencesComputer Vision
Domain adaptation aims to train a model on labeled data from a source domain while minimizing test error on a target domain. Most of existing domain adaptation methods only focus on reducing domain shift of single-modal data. In this paper, we consider a new problem of multimodal domain adaptation and propose a unified framework to solve it. The proposed multimodal domain adaptation neural networks(MDANN) consist of three important modules. (1) A covariant multimodal attention is designed to learn a common feature representation for multiple modalities. (2) A fusion module adaptively fuses attended features of different modalities. (3) Hybrid domain constraints are proposed to comprehensively learn domain-invariant features by constraining single modal features, fused features, and attention scores. Through jointly attending and fusing under an adversarial objective, the most discriminative and domain-adaptive parts of the features are adaptively fused together. Extensive experimental results on two real-world cross-domain applications (emotion recognition and cross-media retrieval) demonstrate the effectiveness of the proposed method.
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