학술논문

Eye State Detection Based on MTCNN and ESP
Document Type
Conference
Source
2023 IEEE International Conference on Sensors, Electronics and Computer Engineering (ICSECE) Sensors, Electronics and Computer Engineering (ICSECE), 2023 IEEE International Conference on. :1477-1482 Aug, 2023
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Robotics and Control Systems
Emotion recognition
Computer vision
Computational modeling
Fatigue
Sensors
Task analysis
Eye State
Efficient Spatial Pyramid
Language
Abstract
Eye state detection is an essential task in computer vision with diverse applications including emotion recognition, fatigue detection in high-risk areas, and computer interaction. This paper introduces a classification model called ERNet, which leverages the Efficient Spatial Pyramid (ESP) technique. The ERNet model is combined with the MTCNN to create a novel eye state detection model called MTED. The ERNet proposed in this paper has better performance than the existing model on the MRL Eyes 2018 dataset. Our ERNet model is more than 99.06% accurate on the MRL Eyes 2018 dataset while maintaining a high processing speed of 87 frames per second. Furthermore, the MTED model achieves a commendable accuracy of 95.41% on the ABD dataset.