SpeechEQ: Speech Emotion Recognition based on Multi-scale Unified Datasets and Multitask Learning
This addresses the problem of inconsistent frameworks in speech emotion recognition for researchers and practitioners, offering a novel approach with significant performance gains.
The paper tackles the lack of unified standards in speech emotion recognition by proposing SpeechEQ, a framework using a multi-scale unified metric and multitask learning, which improves accuracy by 8.0% and 6.5% on two datasets and achieves state-of-the-art results of 78.16% WA and 77.47% UA on another.
Speech emotion recognition (SER) has many challenges, but one of the main challenges is that each framework does not have a unified standard. In this paper, we propose SpeechEQ, a framework for unifying SER tasks based on a multi-scale unified metric. This metric can be trained by Multitask Learning (MTL), which includes two emotion recognition tasks of Emotion States Category (EIS) and Emotion Intensity Scale (EIS), and two auxiliary tasks of phoneme recognition and gender recognition. For this framework, we build a Mandarin SER dataset - SpeechEQ Dataset (SEQD). We conducted experiments on the public CASIA and ESD datasets in Mandarin, which exhibit that our method outperforms baseline methods by a relatively large margin, yielding 8.0% and 6.5% improvement in accuracy respectively. Additional experiments on IEMOCAP with four emotion categories (i.e., angry, happy, sad, and neutral) also show the proposed method achieves a state-of-the-art of both weighted accuracy (WA) of 78.16% and unweighted accuracy (UA) of 77.47%.