使用共享模型从唱歌和说话中识别情感

Biqiao Zhang, Georg Essl, E. Provost
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引用次数: 36

摘要

言语和歌声是两种相互密切相关的声音交流方式。虽然语音和音乐情感识别都取得了重大进展,但很少有工作集中在为语音和歌曲建立共享情感识别模型上。本文提出了语音和歌曲的三种共享情感识别模型:简单模型、单任务分层模型和多任务分层模型。我们研究了这两个交流领域中情感表达的共性和差异。我们比较了不同设置下的性能,研究了评估者一致性和分类准确率之间的关系,并分析了单个特征组的分类性能。我们的研究结果表明,当使用相同的特征集时,多任务模型比单任务模型更准确地分类情绪。这表明,尽管口头和歌唱的情感识别任务不同,但它们是相关的,可以一起考虑。结果表明,一致性率较低的话语和激活度较低的情绪在多任务学习中获益最大。与声音特征相比,视觉特征在口头和歌唱情感表达中似乎更相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing emotion from singing and speaking using shared models
Speech and song are two types of vocal communications that are closely related to each other. While significant progress has been made in both speech and music emotion recognition, few works have concentrated on building a shared emotion recognition model for both speech and song. In this paper, we propose three shared emotion recognition models for speech and song: a simple model, a single-task hierarchical model, and a multi-task hierarchical model. We study the commonalities and differences present in emotion expression across these two communication domains. We compare the performance across different settings, investigate the relationship between evaluator agreement rate and classification accuracy, and analyze the classification performance of individual feature groups. Our results show that the multi-task model classifies emotion more accurately compared to single-task models when the same set of features is used. This suggests that although spoken and sung emotion recognition tasks are different, they are related, and can be considered together. The results demonstrate that utterances with lower agreement rate and emotions with low activation benefit the most from multi-task learning. Visual features appear to be more similar across spoken and sung emotion expression, compared to acoustic features.
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