Multi-model Fusion on Real-time Drowsiness Detection for Telemetric Robotics Tracking Applications

R. Luo, Chin-Hao Hsu, Yu-Cheng Wen
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引用次数: 1

Abstract

Drowsiness of driver is one of the common causes resulting in road crashes. According to the research, there have been twenty percent of the road accidents which are related to the drowsiness of drivers. Nowadays, with the development technology, various approaches are introduced to detect the drowsiness of drivers. In this paper, we propose a multi-model fusion system which is composed of the three models to capture driver’s face and detect drowsiness in the real-time for telemetric robotics tracking applications. The sensor device we used is an RGB camera which is mounted in front of driver to obtain the facial image. Then, we combine the results based on the state of the eye blink, yawn and head deviation to determine whether the driver is drowsy. We test our models to obtain the weighting factors in drowsy value. In the experiment, we show that our system has the high accuracy of detection.
基于多模型融合的实时睡意检测在遥测机器人跟踪中的应用
司机疲劳是导致道路交通事故的常见原因之一。据调查,百分之二十的交通事故与司机的睡意有关。如今,随着技术的发展,各种检测驾驶员睡意的方法层出不穷。在本文中,我们提出了一种由三种模型组成的多模型融合系统,用于遥测机器人跟踪应用中的驾驶员面部实时捕获和睡意检测。我们使用的传感器装置是安装在驾驶员前方的RGB摄像头来获取面部图像。然后,我们根据眨眼、打哈欠和头部偏差的状态将结果结合起来,确定驾驶员是否昏昏欲睡。我们测试了我们的模型,以获得困倦值的权重因子。实验表明,该系统具有较高的检测精度。
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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