Application of CNN based architectures in detection of distracted drivers
Date
2022-08Publisher
Brac UniversityAuthor
Arafin, IrfanaIslam, Md Mahirul
Tazwar, Syed Ittisaf
Das, Nilay Shuvra
Anika, Sabrina Tabassum
Metadata
Show full item recordAbstract
Distracted driving is known to be one of the most significant reasons behind the
occurrence of traffic accidents. Moreover, the phenomenon of the occurrence of
road accidents due to distracted driving has been increasing at a high rate in recent
years. Previously, different machine learning and neural network-based approaches
were taken to find out the best possible way of detecting distracted driving. This
work proposes an effective interpretation which is to detect the distraction of drivers
through a Deep Learning approach through the implementation of several Convo lutional Neural Network (CNN) based architectures. The results presented in this
research is to confirm the better accuracy and success rate of the Deep Learning
approach to detect distracted driving behaviors demonstrating the potentiality of
this method to help measure unusual driving performance. The proposed custom
CNN model not only ensures an impressive accuracy but also it’s ability to interpret
the proper regions of interests on two datasets of distracted driving