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中国民航大学 天津市空管运行规划与安全技术重点实验室,天津,300300
Published:2026
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王莉莉, 殷硕峰, 潘越. Controller fatigue discrimination algorithm based on facial features[J]. 2026, 52(4): 986-994.
王莉莉, 殷硕峰, 潘越. Controller fatigue discrimination algorithm based on facial features[J]. 2026, 52(4): 986-994. DOI: 10.13700/j.bh.1001-5965.2024.0057.
针对现有通过管制员面部信息监测疲劳,极少融合管制真实场景、算法鲁棒性低等特点,提出一种考虑管制员工作特性的疲劳实时判别算法。采用Attention Mesh算法获取面部468点的三维坐标信息,并使用特征匹配法逐样本对眼部与嘴部纵横比阈值进行标定;引入管制员在岗时间、实时陆空通话负荷及疲劳事件发生次数3个指标,将三者通过指数衰减函数动态映射至疲劳监测时间窗口,并通过计算动态衰减时间窗内眨眼频次占比,得出疲劳趋势指标。对某管制单位管制室30位成熟放单管制员班后管制测试的脑电与面部视频数据进行处理,并对通过面部数据得到的疲劳指标Fδ与脑电疲劳指标Fε进行时间维度上的相关性分析,结果表明:在30个被试样本的双变量交叉相关性分析结果中,Pearson相关性系数整体介于0.462~0.785之间,Sig.双尾显著性检验均位于0.01级别,相关性显著,验证了所提算法的有效性与可靠性。
A real-time fatigue discrimination algorithm that takes into account the work characteristics of controllers is proposed in order to address the shortcomings of the current fatigue detection through facial information of controllers
such as the algorithm’s low robustness and infrequent integration of the actual scene of control. Firstly
the Attention Mesh algorithm is used to obtain the 3D coordinate information of 468 points on the face
and the thresholds of eye and mouth aspect ratios are calibrated sample by sample using the feature matching method. Secondly
three indicators are introduced
namely
the controller’s on-duty time
the real-time land and air call load
and the number of fatigue events
and these three indicators are dynamically mapped to the fatigue detection window through the exponential decay function and the fatigue frequency ratio of blinks within the dynamic decay time window is calculated through the calculation of the fatigue frequency ratio of blinks within the dynamic decay time window. The fatigue trend indicator is derived by calculating the percentage of blinking frequency within the dynamic decay time window. Finally
the EEG and facial video data of the post-shift control test of 30 mature release order controllers in the control room of a control unit are processed
and the fatigue indicator Fδ
obtained from the facial data
is correlated with the EEG fatigue indicator Fε in the time dimension. The findings demonstrated that the validity and reliability of the suggested algorithms were confirmed
and the overall Pearson correlation coefficients in the bivariate cross-correlation analysis results of the 30 subject samples ranged from 0.462 to 0.785. The Sig. two-tailed significance tests were found at the 0.01 level
indicating a significant correlation.
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