Abstract

Facial emotion recognition (FER) is the procedure of identifying human emotions from facial expressions. It is often difficult to identify the stress and anxiety levels of an individual through the visuals captured from computer vision. However, the technology enhancements on the Internet of Medical Things (IoMT) have yielded impressive results from gathering various forms of emotional and physical health-related data. The novel deep learning (DL) algorithms are allowing to perform application in a resource-constrained edge environment, encouraging data from IoMT devices to be processed locally at the edge. This article presents an IoMT based facial emotion detection and recognition system that has been implemented in real-time by utilizing a small, powerful, and resource-constrained device known as Raspberry-Pi with the assistance of deep convolution neural networks. For this purpose, we have conducted one empirical study on the facial emotions of human beings along with the emotional state of human beings using physiological sensors. It then proposes a model for the detection of emotions in real-time on a resource-constrained device, i.e., Raspberry-Pi, along with a co-processor, i.e., Intel Movidius NCS2. The facial emotion detection test accuracy ranged from 56% to 73% using various models, and the accuracy has become 73% performed very well with the FER 2013 dataset in comparison to the state of art results mentioned as 64% maximum. A t-test is performed for extracting the significant difference in systolic, diastolic blood pressure, and the heart rate of an individual watching three different subjects (angry, happy, and neutral).

Highlights

  • Internet of Medical Things (IoMT) is an emerging technology that is widely spread in health care management applications for assisting patients in real-time scenarios [1,2]

  • We have designed and implement an IoMT based portable facial emotion recognition (FER) edge device to recognize the facial emotion of an individual

  • FER is achieved by interfering with the systole, diastole, and heart rate sensor data of an individual with visuals capture through an edge device

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Summary

Introduction

Internet of Medical Things (IoMT) is an emerging technology that is widely spread in health care management applications for assisting patients in real-time scenarios [1,2]. IoMT is the amalgamation of smart sensors, wirelessly connected devices, and medical devices. At present, it is monitoring the emotional, physiological, and vital states with the assistance of wearable devices and non-invasive off-the-shelf hardware [3]. The amount of stress and anxiety is huge due to success and failure in their respective work, and it further leads to the suicide of the person. Stress and anxiety are sensed through the facial emotion of an individual. Facial expressions have maximum magnitude over the words during a personal conversation. Distinct procedures are utilized for constructing the automated tools for facial emotion recognition (FER) that are implemented in surveillance systems, expression recognition, interviews, and aggression detection [5,6]

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