Title of article
Game Theory Solutions in Sensor-Based Human Activity Recognition: A Review
Author/Authors
Shayesteh ، Mohammad Hossein Department of Computer and Information Technology Engineering - Islamic Azad University, Qazvin Branch , Shahrokhzadeh ، Behrooz Department of Computer and Information Technology Engineering - Islamic Azad University, Qazvin Branch , Masoumi ، Behrooz Department of Computer and Information Technology Engineering - Islamic Azad University, Qazvin Branch
From page
259
To page
289
Abstract
The Human Activity Recognition (HAR) tasks automatically identify human activities using the sensor data, which has numerous applications in healthcare, sports, security, and human-computer interaction. Despite significant advances in HAR, critical challenges still exist. Game theory has emerged as a promising solution to address these challenges in machine learning problems including HAR. However, there is a lack of research work on applying game theory solutions to the HAR problems. This review paper explores the potential of game theory as a solution for HAR tasks, and bridges the gap between game theory and HAR research work by suggesting novel game-theoretic approaches for HAR problems. The contributions of this work include exploring how game theory can improve the accuracy and robustness of HAR models, investigating how game-theoretic concepts can optimize recognition algorithms, and discussing the game-theoretic approaches against the existing HAR methods. The objective is to provide insights into the potential of game theory as a solution for sensor-based HAR, and contribute to develop a more accurate and efficient recognition system in the future research directions.
Keywords
Human activity recognition , Game theory , Machine learning , Deep learning , Challenges , Solutions , Opportunities
Journal title
Journal of Artificial Intelligence and Data Mining
Journal title
Journal of Artificial Intelligence and Data Mining
Record number
2749866
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