Speech Emotion Recognition (SER) is one of the essential perceptual methods of humans in understanding the situation and how to interact with others, therefore, in recent years, it has been tried to add the ability to recognize emotions to human-machine communication systems. Since the SER process relies on labeled data, databases are essential for it. Incomplete, low-quality or defective data may lead to inaccurate predictions. In this paper, we fixed the inconsistencies in Sharif Emotional Speech Database (ShEMO), as a Persian database, by using an Automatic Speech Recognition (ASR) system and investigating the effect of Farsi language models obtained from accessible Persian text corpora. We also introduced a Persian/Farsi ASR-based SER system that uses linguistic features of the ASR outputs and Deep Learning-based models.
翻译:情感言语认知(SER)是人类理解状况和如何与他人互动的基本观念方法之一,因此,近年来,人们试图将情感认知能力添加到人类机器通信系统中,因为SER过程依赖贴标签的数据,因此数据库是必不可少的,不完整、低质量或有缺陷的数据可能导致不准确的预测。在本文中,我们利用自动言语识别系统(ASR)和调查从可获得的波斯文本公司获得的法西语模型的影响,用ASR输出和深学习模型的语言特征,解决了作为波斯数据库的谢里夫情感言语数据库(ShEMO)中的不一致之处。我们还采用了波斯语/法尔西语的SER系统。