EMOTION RECOGNITION BY FUSING TIME SYNCHRONOUS AND TIME ASYNCHRONOUS REPRESENTATIONS

2021 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP 2021)(2021)

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摘要
In this paper, a novel two-branch neural network model structure is proposed for multimodal emotion recognition, which consists of a time synchronous branch (TSB) and a time asynchronous branch (TAB). To capture correlations between each word and its acoustic realisation, the TSB combines speech and text modalities at each input window frame and then uses pooling across time to form a single embedding vector. The TAB, by contrast, provides cross-utterance information by integrating sentence text embeddings from a number of context utterances into another embedding vector. The final emotion classification uses both the TSB and the TAB embeddings. Experimental results on the IEMOCAP dataset demonstrate that the two-branch structure achieves state-of-the-art results in 4-way classification with all common test setups. When using automatic speech recognition (ASR) output instead of manually transcribed reference text, it is shown that the cross-utterance information considerably improves robustness against ASR errors. Furthermore, by incorporating an extra class for all the other emotions, the final 5-way classification system with ASR hypotheses can be viewed as a prototype for more realistic emotion recognition systems.
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关键词
cross-utterance information,sentence text embeddings,context utterances,final emotion classification,TSB,TAB embeddings,two-branch structure,4-way classification,common test setups,automatic speech recognition output,manually transcribed reference text,5-way classification system,realistic emotion recognition systems,time asynchronous representations,two-branch neural network model structure,multimodal emotion recognition,time synchronous branch,time asynchronous branch,acoustic realisation,text modalities,input window frame,single embedding vector,IEMOCAP dataset,ASR errors
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