A Performance Benchmarking Review of Transformers for Speaker-Independent Speech Emotion Recognition.

IF 6.4
International journal of neural systems Pub Date : 2025-10-01 Epub Date: 2025-07-29 DOI:10.1142/S0129065725300013
Francisco Portal, Javier De Lope, Manuel Graña
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Abstract

Speech Emotion Recognition (SER) is becoming a key element of speech-based human-computer interfaces, endowing them with some form of empathy towards the emotional status of the human. Transformers have become a central Deep Learning (DL) architecture in natural language processing and signal processing, recently including audio signals for Automatic Speech Recognition (ASR) and SER. A central question addressed in this paper is the achievement of speaker-independent SER systems, i.e. systems that perform independently of a specific training set, enabling their deployment in real-world situations by overcoming the typical limitations of laboratory environments. This paper presents a comprehensive performance evaluation review of transformer architectures that have been proposed to deal with the SER task, carrying out an independent validation at different levels over the most relevant publicly available datasets for validation of SER models. The comprehensive experimental design implemented in this paper provides an accurate picture of the performance achieved by current state-of-the-art transformer models in speaker-independent SER. We have found that most experimental instances reach accuracies below 40% when a model is trained on a dataset and tested on a different one. A speaker-independent evaluation combining up to five datasets and testing on a different one achieves up to 58.85% accuracy. In conclusion, the SER results improved with the aggregation of datasets, indicating that model generalization can be enhanced by extracting data from diverse datasets.

评论文章:用于说话人独立语音情感识别的变压器性能基准评价。
语音情感识别(SER)正在成为基于语音的人机界面的关键元素,赋予它们对人类情感状态的某种形式的同理心。变压器已经成为自然语言处理和信号处理的核心深度学习(DL)架构,最近还包括用于自动语音识别(ASR)和SER的音频信号。本文解决的一个核心问题是实现独立于说话人的SER系统,即独立于特定训练集执行的系统,通过克服实验室环境的典型限制,使其能够在现实世界中部署。本文对处理SER任务的变压器架构进行了全面的性能评估,并在最相关的公开可用数据集上进行了不同级别的独立验证,以验证SER模型。本文实施的综合实验设计提供了当前最先进的变压器模型在扬声器独立SER中所取得的性能的准确图像。我们发现,当一个模型在一个数据集上训练并在另一个数据集上测试时,大多数实验实例的准确率都低于40%。独立于说话人的评估结合了多达五个数据集,并在不同的数据集上进行测试,准确率高达58.85%。综上所述,SER结果随着数据集的聚集而提高,表明从不同的数据集中提取数据可以增强模型的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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