Emotion Recognition for Healthcare Surveillance Systems Using Neural
Networks: A Survey
- URL: http://arxiv.org/abs/2107.05989v1
- Date: Tue, 13 Jul 2021 11:17:00 GMT
- Title: Emotion Recognition for Healthcare Surveillance Systems Using Neural
Networks: A Survey
- Authors: Marwan Dhuheir, Abdullatif Albaseer, Emna Baccour, Aiman Erbad,
Mohamed Abdallah, and Mounir Hamdi
- Abstract summary: We present recent research in the field of using neural networks to recognize emotions.
We focus on studying emotions' recognition from speech, facial expressions, and audio-visual input.
These three emotion recognition techniques can be used as a surveillance system in healthcare centers to monitor patients.
- Score: 8.31246680772592
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recognizing the patient's emotions using deep learning techniques has
attracted significant attention recently due to technological advancements.
Automatically identifying the emotions can help build smart healthcare centers
that can detect depression and stress among the patients in order to start the
medication early. Using advanced technology to identify emotions is one of the
most exciting topics as it defines the relationships between humans and
machines. Machines learned how to predict emotions by adopting various methods.
In this survey, we present recent research in the field of using neural
networks to recognize emotions. We focus on studying emotions' recognition from
speech, facial expressions, and audio-visual input and show the different
techniques of deploying these algorithms in the real world. These three emotion
recognition techniques can be used as a surveillance system in healthcare
centers to monitor patients. We conclude the survey with a presentation of the
challenges and the related future work to provide an insight into the
applications of using emotion recognition.
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