Malla Amol M, Davidson Paul R, Bones Philip J, Green Richard, Jones Richard D
Electrical and Computer Engineering, University of Canterbury, Christchurch, New Zealand.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:6741-4. doi: 10.1109/IEMBS.2010.5626013.
A device capable of continuously monitoring an individual's levels of alertness in real-time is highly desirable for preventing drowsiness and microsleep related accidents. This paper presents a development of non-intrusive and light-insensitive video-based system that uses computer-vision methods to measure facial metric for identifying visible facial signs of drowsiness and behavioral microsleep. The developed system uses a remotely placed camera with a near-infrared illumination to acquire the video. The computer-vision methods are then applied to sequentially localize face, eyes, and eyelids positions to measure ratio of eye closure. The system was evaluated in frontal images of nine subjects with varying facial structures and exhibiting several ratio of eye closure and eye gaze under fully dark and ambient lighting conditions. The preliminary results showed promising results with sufficient accuracy to distinguish between fully closed, half closed, and fully open eyes.
一种能够实时连续监测个人警觉水平的设备对于预防与困倦和微睡眠相关的事故非常有必要。本文介绍了一种基于视频的非侵入式且对光线不敏感的系统的开发,该系统使用计算机视觉方法来测量面部指标,以识别困倦和行为性微睡眠的可见面部迹象。所开发的系统使用一个带有近红外照明的远程摄像头来获取视频。然后应用计算机视觉方法依次定位面部、眼睛和眼睑的位置,以测量闭眼比例。该系统在九名面部结构不同且在完全黑暗和环境光条件下呈现几种闭眼比例和目光注视情况的受试者的正面图像中进行了评估。初步结果显示出有前景的结果,具有足够的准确性来区分完全闭合、半闭合和完全睁开的眼睛。