Multi-Classifier Interactive Learning for Ambiguous Speech Emotion Recognition
Ying Zhou, Xuefeng Liang, Yu Gu, Yifei Yin, Longshan Yao

TL;DR
This paper introduces a multi-classifier interactive learning approach to improve speech emotion recognition accuracy in ambiguous cases by mimicking multiple perspectives and iteratively refining emotion labels.
Contribution
It proposes a novel multi-classifier interactive learning method that enhances recognition of ambiguous speech emotions by leveraging multiple classifiers and emotion probability distributions.
Findings
Improves recognition accuracy on benchmark datasets
Increases recognition consistency from moderate to substantial
Demonstrates effectiveness across three benchmark corpora
Abstract
In recent years, speech emotion recognition technology is of great significance in industrial applications such as call centers, social robots and health care. The combination of speech recognition and speech emotion recognition can improve the feedback efficiency and the quality of service. Thus, the speech emotion recognition has been attracted much attention in both industry and academic. Since emotions existing in an entire utterance may have varied probabilities, speech emotion is likely to be ambiguous, which poses great challenges to recognition tasks. However, previous studies commonly assigned a single-label or multi-label to each utterance in certain. Therefore, their algorithms result in low accuracies because of the inappropriate representation. Inspired by the optimally interacting theory, we address the ambiguous speech emotions by proposing a novel multi-classifier…
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Taxonomy
TopicsEmotion and Mood Recognition · Speech and Audio Processing · Text and Document Classification Technologies
