Speech Emotion Recognition Incorporating Relative Difficulty and Labeling Reliability
Youngdo Ahn,
Sangwook Han,
Seonggyu Lee
et al.
Abstract:Emotions in speech are expressed in various ways, and the speech emotion recognition (SER) model may perform poorly on unseen corpora that contain different emotional factors from those expressed in training databases. To construct an SER model robust to unseen corpora, regularization approaches or metric losses have been studied. In this paper, we propose an SER method that incorporates relative difficulty and labeling reliability of each training sample. Inspired by the Proxy-Anchor loss, we propose a novel … Show more
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