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Advancing Multiple Instance Learning with Attention Modeling for Categorical Speech Emotion Recognition

2020-08-15 07:23:43
Shuiyang Mao, P. C. Ching, C.-C. Jay Kuo, Tan Lee

Abstract

Categorical speech emotion recognition is typically performed as a sequence-to-label problem, i.e., to determine the discrete emotion label of the input utterance as a whole. One of the main challenges in practice is that most of the existing emotion corpora do not give ground truth labels for each segment; instead, we only have labels for whole utterances. To extract segment-level emotional information from such weakly labeled emotion corpora, we propose using multiple instance learning (MIL) to learn segment embeddings in a weakly supervised manner. Also, for a sufficiently long utterance, not all of the segments contain relevant emotional information. In this regard, three attention-based neural network models are then applied to the learned segment embeddings to attend the most salient part of a speech utterance. Experiments on the CASIA corpus and the IEMOCAP database show better or highly competitive results than other state-of-the-art approaches.

Abstract (translated)

URL

https://arxiv.org/abs/2008.06667

PDF

https://arxiv.org/pdf/2008.06667.pdf


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