Publication | Open Access
QAP: A Quantum-Inspired Adaptive-Priority-Learning Model for Multimodal Emotion Recognition
18
Citations
28
References
2023
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningAffective NeuroscienceMultimodal LearningMultimodal Sentiment AnalysisSocial SciencesQuantum ComputingData ScienceQuantum Optimization AlgorithmPattern RecognitionQuantum Machine LearningAffective ComputingMultimodal Emotion RecognitionQuantum ScienceCognitive ScienceQuantum StateMultimodal Signal ProcessingComputer ScienceDeep LearningEmotionEmotion Recognition
Multimodal emotion recognition for video has gained considerable attention in recent years, in which three modalities (i.e., textual, visual and acoustic) are involved. Due to the diverse levels of informational content related to emotion, three modalities typically possess varying degrees of contribution to emotion recognition. More seriously, there might be inconsistencies between the emotion of individual modality and the video. The challenges mentioned above are caused by the inherent uncertainty of emotion. Inspired by the recent advances of quantum theory in modeling uncertainty, we make an initial attempt to design a quantum-inspired adaptive-priority-learning model (QAP) to address the challenges. Specifically, the quantum state is introduced to model modal features, which allows each modality to retain all emotional tendencies until the final classification. Additionally, we design Q-attention to orderly integrate three modalities, and then QAP learns modal priority adaptively so that modalities can provide different amounts of information based on priority. Experimental results on the IEMOCAP and MOSEI datasets show that QAP establishes new state-of-the-art results.
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