Understanding human behavior and monitoring mental health are essential to maintaining the community and society's safety. As there has been an increase in mental health problems during the COVID-19 pandemic due to uncontrolled mental health, early detection of mental issues is crucial. Nowadays, the usage of Intelligent Virtual Personal Assistants (IVA) has increased worldwide. Individuals use their voices to control these devices to fulfill requests and acquire different services. This paper proposes a novel deep learning model based on the gated recurrent neural network and convolution neural network to understand human emotion from speech to improve their IVA services and monitor their mental health.
翻译:理解人类行为并监测心理健康对于维护社区和社会安全至关重要,由于精神卫生不受控制,COVID-19大流行期间心理健康问题有所增加,因此早期发现精神问题至关重要。如今,全世界使用智能虚拟个人助理(IVA)的情况有所增加,个人利用自己的声音来控制这些设备满足请求并获得不同的服务。本文提议了一个新的深层次学习模式,其基础是封闭的经常神经网络和神经神经网络,以从语言上理解人类的情感,改善他们的IVA服务并监测他们的心理健康。