面部特征监测实时睡意检测

B. Manu
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引用次数: 52

摘要

本文描述了一种通过三个明确的阶段来检测睡意的有效方法。这三个阶段分别是面部特征检测使用维奥拉·琼斯,眼动追踪和打哈欠检测。一旦检测到人脸,该系统通过单独分割皮肤部分,只考虑颜色分量,从而根据肤色拒绝大部分非人脸图像背景,从而实现光照不变性。通过相关系数模板匹配实现眼睛跟踪和哈欠检测。将上述每个阶段的特征向量进行连接,并使用二元线性支持向量机分类器将连续帧分为疲劳和非疲劳状态,如果超过阈值时间,则对前者发出警报。大量的实时实验证明,该方法能够有效地发现驾驶员的困倦状态并提醒驾驶员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial features monitoring for real time drowsiness detection
This paper describes an efficient method for drowsiness detection by three well defined phases. These three phases are facial features detection using Viola Jones, the eye tracking and yawning detection. Once the face is detected, the system is made illumination invariant by segmenting the skin part alone and considering only the chromatic components to reject most of the non face image backgrounds based on skin color. The tracking of eyes and yawning detection are done by correlation coefficient template matching. The feature vectors from each of the above phases are concatenated and a binary linear support vector machine classifier is used to classify the consecutive frames into fatigue and nonfatigue states and sound an alarm for the former, if it is above the threshold time. Extensive real time experiments prove that the proposed method is highly efficient in finding the drowsiness and alerting the driver.
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