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KAKOUROS, S. STAFYLAKIS, T. MOŠNER, L. BURGET, L.
Original Title
Speech-Based Emotion Recognition with Self-Supervised Models Using Attentive Channel-Wise Correlations and Label Smoothing
Type
conference paper
Language
English
Original Abstract
When recognizing emotions from speech, we encounter two common problems: how to optimally capture emotion- relevant information from the speech signal and how to best quantify or categorize the noisy subjective emotion labels. Self-supervised pre-trained representations can robustly capture information from speech enabling state-of-the-art results in many downstream tasks including emotion recognition. However, better ways of aggregating the information across time need to be considered as the relevant emotion information is likely to appear piecewise and not uniformly across the signal. For the labels, we need to take into account that there is a substantial degree of noise that comes from the subjective human annotations. In this paper, we propose a novel approach to attentive pooling based on correlations between the representations' coefficients combined with label smoothing, a method aiming to reduce the confidence of the classifier on the training labels. We evaluate our proposed approach on the benchmark dataset IEMOCAP, and demonstrate high performance surpassing that in the literature. The code to reproduce the results is available at github.com/skakouros/s3prl_attentive_correlation.
Keywords
emotion recognition, self-supervised features, iemocap, hubert, wavlm, wav2vec 2.0
Authors
KAKOUROS, S.; STAFYLAKIS, T.; MOŠNER, L.; BURGET, L.
Released
4. 6. 2023
Publisher
IEEE Signal Processing Society
Location
Rhodes Island
ISBN
978-1-7281-6327-7
Book
Proceedings of ICASSP 2023
Pages from
1
Pages to
5
Pages count
URL
https://ieeexplore.ieee.org/document/10094673
BibTex
@inproceedings{BUT185201, author="KAKOUROS, S. and STAFYLAKIS, T. and MOŠNER, L. and BURGET, L.", title="Speech-Based Emotion Recognition with Self-Supervised Models Using Attentive Channel-Wise Correlations and Label Smoothing", booktitle="Proceedings of ICASSP 2023", year="2023", pages="1--5", publisher="IEEE Signal Processing Society", address="Rhodes Island", doi="10.1109/ICASSP49357.2023.10094673", isbn="978-1-7281-6327-7", url="https://ieeexplore.ieee.org/document/10094673" }