驾驶员状态监测系统的实时困倦检测算法

J. Baek, Byung-Gil Han, Kwang-Ju Kim, Yun-Su Chung, Soo-In Lee
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引用次数: 32

摘要

在本文中,我们提出了一种新的困倦检测算法,使用靠近仪表板的摄像头。该算法在图像中检测驾驶员的面部,并估计人脸区域的地标。为了检测人脸,该算法使用了基于改进的人口普查变换特征的AdaBoost分类器。该算法采用局部二值特征回归方法进行人脸标记检测。眼睛状态(睁眼、闭眼)是由眼宽比的值决定的,眼宽比很容易通过眼区域的地标计算出来。该算法具有可在嵌入式设备上运行的实时性。利用实场红外摄像机的视频记录获得数据集。该算法在目标板(i.mx6q)上进行了测试。结果表明,该算法在速度和精度上都有较好的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Drowsiness Detection Algorithm for Driver State Monitoring Systems
In this paper, we proposes a novel drowsiness detection algorithm using a camera near the dashboard. The proposed algorithm detects the driver's face in the image and estimates the landmarks in the face region. In order to detect the face, the proposed algorithm uses an AdaBoost classifier based on the Modified Census Transform features. And the proposed algorithm uses regressing Local Binary Features for face landmark detection. Eye states (closed, open) is determined by the value of Eye Aspect Ratio which is easily calculated by the landmarks in eye region. The proposed algorithm provides realtime performance that can be run on the embedded device. We obtained the dataset using video records from the infrared camera which is used the real-field. The proposed algorithm tested in the target board (i.mx6q). The result shows that the proposed algorithm outperformed in the speed and accuracy.
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