Driver behavior monitoring is essential for advancing driver assistance systems, particularly in detecting highrisk or distracted actions. This study introduces ResBoot-50, an enhanced ResNet-50-based model designed for driver behavior detection, trained and tested on a dataset State-Farm, MRLEye, and Drive&Act datasets to capture a diverse range of driving behaviors. To ensure robust evaluation, we incorporated bootstrap sampling techniques, which provided varied training and validation splits, enabling a more comprehensive assessment of model performance and generalizability. ResBoot-50 achieved exceptional performance, with a validation accuracy, precision, recall, and F1-score all approximately at 99.52%, underscoring its reliability across multiple behavior categories. The use of bootstrap testing has proved beneficial in reducing overfitting and enhancing model robustness, supporting the models readiness for real-world applications. These findings highlight the impact of bootstrap-based evaluation in driver behavior analysis and suggest significant potential for integrating ResBoot-50 into driver assistance systems to improve road safety.
This work was supported partially by the BK21 FOUR program of the National Research Foundation of Korea funded by the Ministry of Education (NRF5199991514504).