Real Time Prevention of Driver Fatigue Using Deep Learning and MediaPipe

Abstract

This paper describes the development of a system for detecting driver drowsiness whose goal is to alert drivers of their sleepy state to prevent traffic accidents. It is essential that drowsiness detection in a driving environment be conducted in a non-intrusive manner and that the driver not be troubled by alerts when they are not sleepy. We make use of the MediaPipe Facemesh framework to extract facial features and the Binary Classification Neural Network to precisely detect drowsy states in our solution to this open problem. The solution that minimize false positives is created to determine whether or not the driver exhibits sleepiness symptoms. The approach extracts numerical features from images using deep learning techniques, which are then added to a fuzzy logic-based system. This system typically achieve 91% accuracy on training data and 92% accuracy on test data. The fuzzy logic-based approach, however, stands out because it doesn't raise erroneous alerts (percentage of correctly identified footage where the driver is not tired). Although the findings are not particularly satisfying, the recommendations offered in this study are promising and may be used as a strong platform for future work.

Authors and Affiliations

Swapnil Dalve, Ishwar Ramdasi, Ganesh Kothawade, Yash Khadke4 and Manasi Wete

Keywords

Related Articles

Grid Interactive Solar Inverters and Their Impact on Power System

The inverter in a grid interactive structure can transform solar generate DC power into AC power that is then fed directly to the grid. As a building receive this AC energy, it is circulated to instruments and lighting a...

A Review Paper on Wireless Sensor Network

Security is one of the most essential things to consider if sensor networks are to reach their full potential. Even more innocuous applications, such as home health monitoring, habitat monitoring, and subsurface research...

AI-Driven UX/UI Design: Empirical Research and Applications in FinTech

This study explores the transformative impact of AI-driven UX/UI design in the FinTech sector, examining current practices, user preferences, and emerging trends. Through a mixed-methods approach, including surveys, inte...

Separating FECG from MECG and Analyzing Fetal Heart Rate

Figuring out fetal coronary heart can be essential for monitoring the situation of a fetus. While an ECG signal is recorded by way of putting electrodes on the maternal stomach, the fetal ECG is regularly masked by using...

Comparative Study and Utilization of Best Deep Learning Algorithms for the Image Processing

Deep learning has gained immense popularity in scientific computing, and its algorithms are widely used in complex problem-solving industries. Every deep learning algorithm use different types of neural networks to perfo...

Download PDF file
  • EP ID EP745070
  • DOI 10.55524/ijircst.2023.11.3.2
  • Views 20
  • Downloads 0

How To Cite

Swapnil Dalve, Ishwar Ramdasi, Ganesh Kothawade, Yash Khadke4 and Manasi Wete (2023). Real Time Prevention of Driver Fatigue Using Deep Learning and MediaPipe. International Journal of Innovative Research in Computer Science and Technology, 11(3), -. https://europub.co.uk/articles/-A-745070