Fatigue detection for public transport drivers under the normalization of epidemic prevention

Zhe Yu, Lei Li, Lijun Xu, Kansong Chen
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引用次数: 1

Abstract

Several studies have shown that fatigue driving is one of the important causes of public transport safety accidents. With the outbreak of the COVID-19, the wearing of masks by public transport drivers presents new challenges for computer-based visual fatigue detection. In order to achieve the goal of accurately capturing the landmark information of the face even when the face is occluded by a large area, we adopt the DNN-based face detection method which has the highest accuracy and the best occlusion resistance. When the driver's face is blocked, the landmark information of the blocked face can be accurately detected by using our optimized face landmark detector. The accuracy rate of landmark recognition can reach 97.80%. On this basis, we calculate the driver's eye information, mouth information and the driver's head deflection angle information in real time as the judgment indicators of the degree of fatigue to comprehensively evaluate the driver's fatigue state. And use mathematical methods to fuse indicators in real time, classify the driver's fatigue state according to the value of the fusion indicators, and adopt different early warning methods for different levels of fatigue. In addition, in order to further improve the accuracy of the detection results and exclude the influence of other facial behaviors on our fatigue judgment indicators, we propose a kinetic energy calculation formula for facial organs based on the improved optical flow method. According to the different kinetic energy of facial organs in different states, which can accurately distinguish the different behaviors of the same facial organs such as blinking and closing eyes, yawning and speaking, which significantly increases the robustness and generalization ability of the detection program. The final experimental results show that the correct rate of the method for determining the degree of fatigue of the driver and passengers can reach 98.40% and 92.30% respectively when the driver does not wear a mask or wears a mask.
防疫常态化下公共交通驾驶员疲劳检测
多项研究表明,疲劳驾驶是公共交通安全事故的重要原因之一。随着新冠肺炎疫情的爆发,公共交通司机佩戴口罩对基于计算机的视疲劳检测提出了新的挑战。为了在人脸被大面积遮挡的情况下也能准确捕捉到人脸的地标信息,我们采用了准确率最高、抗遮挡能力最好的基于dnn的人脸检测方法。当驾驶员的面部被遮挡时,利用我们优化的人脸地标检测器可以准确地检测出被遮挡面部的地标信息。地标识别准确率可达97.80%。在此基础上,实时计算驾驶员的眼睛信息、嘴巴信息和驾驶员头部偏角信息作为疲劳程度的判断指标,综合评价驾驶员的疲劳状态。并利用数学方法实时融合各项指标,根据融合指标的值对驾驶员的疲劳状态进行分类,针对不同的疲劳程度采用不同的预警方法。此外,为了进一步提高检测结果的准确性,排除其他面部行为对疲劳判断指标的影响,我们提出了基于改进光流法的面部器官动能计算公式。根据不同状态下面部器官的不同动能,能够准确区分出同一面部器官的不同行为,如眨眼、闭眼、打哈欠、说话等,显著提高了检测程序的鲁棒性和泛化能力。最终的实验结果表明,该方法在驾驶员不戴口罩和驾驶员戴口罩时判断驾驶员和乘客疲劳程度的正确率分别可达98.40%和92.30%。
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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