Real Time Prevention of Driver Fatigue Using Deep Learning and MediaPipe

Swapnil Dalve, Ishwar Ramdasi, Ganesh Kothawade, Yash Khadke, Manasi Wete
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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.
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利用深度学习和MediaPipe实时预防驾驶员疲劳
本文介绍了一种驾驶员睡意检测系统的开发,其目的是提醒驾驶员昏昏欲睡的状态,以防止交通事故的发生。至关重要的是,在驾驶环境中,睡意检测必须以非侵入性的方式进行,并且司机在不困的时候不会被警报打扰。我们利用MediaPipe Facemesh框架提取人脸特征,利用二值分类神经网络精确检测困倦状态。创建最大限度地减少误报的解决方案,以确定驾驶员是否表现出嗜睡症状。该方法使用深度学习技术从图像中提取数值特征,然后将其添加到基于模糊逻辑的系统中。该系统通常在训练数据上达到91%的准确率,在测试数据上达到92%的准确率。然而,基于模糊逻辑的方法脱颖而出,因为它不会发出错误警报(驾驶员不疲劳的正确识别镜头的百分比)。虽然研究结果不是特别令人满意,但本研究提出的建议是有希望的,可以作为未来工作的有力平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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