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Enhanced Multimodal Representation Learning with Cross-modal KD

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arxiv 2306.07646 v1 pith:OEXOTGXD submitted 2023-06-13 cs.CV cs.MM

Enhanced Multimodal Representation Learning with Cross-modal KD

classification cs.CV cs.MM
keywords informationteacherlearningmutualmodelmultimodalstudentweak
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper explores the tasks of leveraging auxiliary modalities which are only available at training to enhance multimodal representation learning through cross-modal Knowledge Distillation (KD). The widely adopted mutual information maximization-based objective leads to a short-cut solution of the weak teacher, i.e., achieving the maximum mutual information by simply making the teacher model as weak as the student model. To prevent such a weak solution, we introduce an additional objective term, i.e., the mutual information between the teacher and the auxiliary modality model. Besides, to narrow down the information gap between the student and teacher, we further propose to minimize the conditional entropy of the teacher given the student. Novel training schemes based on contrastive learning and adversarial learning are designed to optimize the mutual information and the conditional entropy, respectively. Experimental results on three popular multimodal benchmark datasets have shown that the proposed method outperforms a range of state-of-the-art approaches for video recognition, video retrieval and emotion classification.

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