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首页> 外文期刊>International journal of computational intelligence research >Robust and Efficient Driver Monitoring System Using A Synthesis Of Facial Features And Biosignals
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Robust and Efficient Driver Monitoring System Using A Synthesis Of Facial Features And Biosignals

机译:结合面部特征和生物信号的强大而高效的驾驶员监控系统

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摘要

Monitoring the driver's state of consciousness and fatigue is exclusively important to reduce the number of traffic accidents. We have proposed a collective data fusion method for checking driver safety levels by combining eye features and Heart rate Variability (HRV). Fatigue behavior was determined via facial image processing using Matlab as a tool. After detecting the face, the location of the eyes will be detected using the duration of eye closure, and the frequency of eye blinks. It is used as a distinctive characteristic to judge whether a driver is drowsy or not. General duration of closure is 0.15 to 0.25 seconds. Initially the HRV analysis was accomplished by acquiring Electrocardiogram (ECG) signal through non-intrusive ECG sensors wrapped on to the steering wheel followed by filtering noises and we have calculated pulse rate via peak detection using LabVIEW. If there are any abnormal signs found in the ECG of the driving person then the patient is wide-open to have a second order attack. The corresponding heart rate is sent as an alert SMS to the medical practitioner by microcontroller through GSM modem.
机译:监控驾驶员的意识和疲劳状态对于减少交通事故的发生非常重要。我们提出了一种通过结合眼睛特征和心率变异性(HRV)来检查驾驶员安全级别的集体数据融合方法。通过使用Matlab作为工具通过面部图像处理来确定疲劳行为。在检测到脸部之后,将使用闭眼的持续时间来检测眼睛的位置,并且眨眼的频率。它用作判断驾驶员是否困倦的独特特征。闭合的一般持续时间为0.15至0.25秒。最初,HRV分析是通过包裹在方向盘上的非侵入式ECG传感器获取心电图(ECG)信号,然后过滤噪声来完成的,我们已经使用LabVIEW通过峰值检测计算了脉搏率。如果在驾驶人的心电图中发现任何异常迹象,则患者会敞开大门进行二级攻击。微控制器通过GSM调制解调器将相应的心率作为警报SMS发送给医生。

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