Gupta Megha V, Vaikole Shubhangi, Oza Ankit D, Patel Amisha, Burduhos-Nergis Diana Petronela, Burduhos-Nergis Dumitru Doru
Department of Computer Engineering, New Horizon Institute of Technology and Management, University of Mumbai, Mumbai 400615, Maharashtra, India.
Department of Computer Engineering, Datta Meghe College of Engineering, University of Mumbai, Mumbai 400708, Maharashtra, India.
Bioengineering (Basel). 2022 Sep 27;9(10):510. doi: 10.3390/bioengineering9100510.
The purpose of this research is to emphasize the importance of mental health and contribute to the overall well-being of humankind by detecting stress. Stress is a state of strain, whether it be mental or physical. It can result from anything that frustrates, incenses, or unnerves you in an event or thinking. Your body's response to a demand or challenge is stress. Stress affects people on a daily basis. Stress can be regarded as a hidden pandemic. Long-term (chronic) stress results in ongoing activation of the stress response, which wears down the body over time. Symptoms manifest as behavioral, emotional, and physical effects. The most common method involves administering brief self-report questionnaires such as the Perceived Stress Scale. However, self-report questionnaires frequently lack item specificity and validity, and interview-based measures can be time- and money-consuming. In this research, a novel method used to detect human mental stress by processing audio-visual data is proposed. In this paper, the focus is on understanding the use of audio-visual stress identification. Using the cascaded RNN-LSTM strategy, we achieved 91% accuracy on the RAVDESS dataset, classifying eight emotions and eventually stressed and unstressed states.
本研究的目的是强调心理健康的重要性,并通过检测压力为人类的整体福祉做出贡献。压力是一种紧张状态,无论是心理上还是身体上的。它可能源于任何在事件或思维中使你感到沮丧、愤怒或不安的事情。你身体对需求或挑战的反应就是压力。压力每天都在影响着人们。压力可被视为一种隐性的大流行病。长期(慢性)压力会导致压力反应持续激活,随着时间的推移会使身体逐渐衰弱。症状表现为行为、情绪和身体方面的影响。最常见的方法是使用简短的自我报告问卷,如感知压力量表。然而,自我报告问卷往往缺乏项目特异性和有效性,而基于访谈的测量方法可能既耗时又费钱。在本研究中,提出了一种通过处理视听数据来检测人类心理压力的新方法。在本文中,重点是理解视听压力识别的应用。使用级联RNN-LSTM策略,我们在RAVDESS数据集上实现了91%的准确率,对八种情绪以及最终的压力和非压力状态进行分类。