About this Research Topic
Emotion recognition has applications in various industries, including retail, education, health care, and security. Marketing/advertising firms want to know the customers’ reactions to advertisements, design, and products by analyzing their emotions. Education applications measure students’ response, engagement, and interest in the content and develop personalized content by incorporating emotion as feedback. It can also play an essential role in security. It can recognize individuals for suspicious behavior in a crowd by tracking their current emotional state, age, and criminal record. Real-time emotion recognition can stop potential terrorist activity.
The purpose of this Research Topic is to present the recent advancement of Emotion recognition techniques in Artificial Intelligence, Machine Learning, and the medical science field to the broader scientific community.
The main topics include but are not limited to
1. AI-based Emotion Recognition Techniques.
2. Emotion Recognition with Machine Learning Algorithms.
3. Emotion Recognition with AI-based EEG Signal Classification.
4. Emotion Recognition with Facial Expression Classification using ML Algorithm.
5. Emotion Recognition with Physiological Signals, Classification using AI-ML techniques.
6. Image Processing based Emotion Recognition.
7. Digital Footprint-based Emotion Recognition using AI Techniques.
8. Emotion Recognition Classification using Deep Learning Algorithms.
9. Brain Signal Classification for Emotion Recognition with ML Algorithms
10. Techniques in Medical Science for Emotion Recognition
Keywords: Emotion Recognition, EEG, Physiological Signals, Artificial Intelligence, Machine Learning, Deep Learning
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.