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Facial Expression Measurement for Detecting Driver Drowsiness

机译:面部表情测量以检测驾驶员的睡意

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This paper presents the method of detecting driver's drowsiness level from facial expressions. Our method is executed according to the following flow: taking a driver's facial image, tracing the facial features by image processing, and classifying the driver's drowsiness level by pattern classification. We found that facial expression had the highest linear correlation with brain waves as the general index of drowsiness during monotonous driving. After analyzing the facial muscle activities, we determined 17 feature points on face for detecting driver drowsiness. A camera set on a dashboard recorded the driver's facial image. We applied Active Appearance Model (AAM) for measuring the 3-dimensional coordinates of the feature points on the facial image. In order to classify drowsiness into 6 levels, we applied k-Nearest-Neighbor method. As a result, the average Root Mean Square Errors (RMSE) among 13 participants was less than 1.0 level. Our method also detected the driver's smile.
机译:本文提出了一种从面部表情中检测驾驶员睡意程度的方法。我们的方法根据以下流程执行:拍摄驾驶员的面部图像,通过图像处理跟踪面部特征,并通过模式分类对驾驶员的睡意程度进行分类。我们发现,面部表情与单调驾驶时嗜睡的一般指标具有最高的线性相关性。在分析了面部肌肉活动之后,我们确定了面部的17个特征点以检测驾驶员的睡意。仪表板上的摄像机记录了驾驶员的面部图像。我们应用主动外观模型(AAM)来测量面部图像上特征点的3维坐标。为了将嗜睡症分为6个等级,我们应用了k-最近邻法。结果,13位参与者的平均均方根误差(RMSE)低于1.0水平。我们的方法还检测到驾驶员的微笑。

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