Driver Drowsiness and Distraction Detection: An Image Processing-Based Comparative Analysis for Improved Accuracy

Dattatray G. Takale
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Abstract

This research presents a comprehensive examination and implementation of driver drowsiness, distraction, and detection systems utilizing advanced image processing techniques. The literature review encompasses an in-depth analysis of drowsiness, distraction, and detection parameters, presented in tabulated form. The proposed architecture is detailed through flow charts outlining both software and hardware components. A comparative analysis of key parameters, along with their corresponding accuracy percentages, is provided in a structured table. The findings demonstrate that the proposed system exhibits superior accuracy compared to existing results. Through practical implementation, the system proves effective in accurately detecting driver sleepiness, classifying states as Sleepy, Drowsy, or Active. Notably, the proposed work achieves high accuracy, with eye detection accuracy at 98% and drowsiness accuracy at 96%, showcasing an improvement of approximately 10% when compared to existing solutions.
驾驶员瞌睡和分心检测:基于图像处理的比较分析,提高准确性
本研究利用先进的图像处理技术,对驾驶员嗜睡、分心和检测系统进行了全面检查和实施。文献综述包括对嗜睡、分心和检测参数的深入分析,并以表格形式呈现。拟议的架构通过流程图详细介绍了软件和硬件组件。关键参数的比较分析及其相应的准确率以结构化表格的形式提供。研究结果表明,与现有结果相比,建议的系统具有更高的准确性。通过实际应用,证明该系统能有效准确地检测出驾驶员的睡眠状态,并将其分为瞌睡、昏昏欲睡或活跃三种状态。值得注意的是,建议的工作实现了高准确度,眼睛检测准确度为 98%,瞌睡准确度为 96%,与现有解决方案相比提高了约 10%。
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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