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arxiv: 2409.18971 · v1 · pith:GGTD27W4 · submitted 2024-09-12 · cs.MM · cs.AI· cs.SD· eess.AS

Early Joint Learning of Emotion Information Makes MultiModal Model Understand You Better

Reviewed by Pithpith:GGTD27W4open to challenge →

classification cs.MM cs.AIcs.SDeess.AS
keywords audioemotionjointmodeldataearlyfeaturesmodal
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In this paper, we present our solutions for emotion recognition in the sub-challenges of Multimodal Emotion Recognition Challenge (MER2024). To mitigate the modal competition issue between audio and text, we adopt an early fusion strategy based on a large language model, where joint training of audio and text is conducted initially. And the joint Audio-Text modal feature will be late-fused with other unimodal features. In order to solve the problems of data insufficiency and class imbalance, We use multiple turns of multi-model voting for data mining. Moreover, to enhance the quality of audio features, we employ speech source separation to preprocess audios. Our model ranks \textbf{2nd} in both MER2024-SEMI and MER2024-NOISE, validating our method's effectiveness.

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