Mon-1-9-6 Group Gated Fusion on Attention-based Bidirectional Alignment for Multimodal Emotion Recognition

Pengfei Liu(SpeechX Limited), Kun Li(SpeechX Limited) and Helen Meng(The Chinese University of Hong Kong)
Abstract: Emotion recognition is a challenging and actively-studied research area that plays a critical role in emotion-aware human-computer interaction systems. In a multimodal setting, temporal alignment between different modalities has not been well investigated yet. This paper presents a new model named as Gated Bidirectional Alignment Network (GBAN), which consists of an attention-based bidirectional alignment network over LSTM hidden states to explicitly capture the alignment relationship between speech and text, and a novel group gated fusion (GGF) layer to integrate the representations of different modalities. We empirically show that the attention-aligned representations outperform the last-hidden-states of LSTM significantly, and the proposed GBAN model outperforms existing state-of-the- art multimodal approaches on the IEMOCAP dataset.
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