Indonesian Journal of Electrical Engineering and Computer Science
Vol 27, No 3: September 2022

An approach to classify distraction driver detection system by using mining techniques

Reddy Shiva Shankar (SRKR Engineering College)
Pilli Neelima (SRKR Engineering College)
Voosala Priyadarshini (SRKR Engineering College)
Swaroop Ravi Chigurupati (SRKR Engineering College)



Article Info

Publish Date
01 Sep 2022

Abstract

According to the motor vehicle safety division, over the past 5-10 years, usage of motor vehicles has rapidly increased, in that specifical usage of cars has grown tremendously. The major contribution of this paper is a systematic evaluation of the scholarly literature on driver distraction detection techniques. Our driver distraction detection framework offers a systematic overview of evaluated methodologies for detecting driver attention. So, we need to develop a model that classifies each driver's behaviour and determines its corresponding class name. To overcome this dispute, we have attained an appreciable number of deep learning algorithms on the dataset like convolutional neural network (CNN) and VGG16 to detect what the driver is doing in the car as given in the driver images. This process can be done by predicting the likelihood of the driver's actions in each picture. Of all models, we distinguished that the VGG16 Algorithm has conquered CNN with a loss of 0.298 and an Accuracy of 91.7%.

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