1. Amodio, A., Ermidoro, M., Maggi, D., Formentin, S., & Savaresi, S. M. 2018. Automatic detection of driver impairment based on pupillary light reflex. IEEE transactions on intelligent transportation systems, 20(8), 3038-3048.
2. A review on driver drowsiness based on image, bio-signal, and driver behavior
3. Liu, D., Zhang, C., Zhang, Q., & Kong, Q. 2020, October. Design and implementation of multimodal fatigue detection system combining eye and yawn information. In 2020 IEEE 5th International Conference on Signal and Image Processing (ICSIP) (pp. 65-69). IEEE.
4. A Review of Recent Developments in Driver Drowsiness Detection Systems
5. Real time detection of driver fatigue based on CNN‐LSTM