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Risk prediction model using eye movements during simulated driving with logistic regressions and neural networks

机译:利用Logistic回归和神经网络的模拟驱动期间使用眼球运动的风险预测模型

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Background: Many studies have found that eye movement behavior provides a real-time index of mental activity. Risk management architectures embedded in autonomous vehicles fail to include human cognitive aspects. We set out to evaluate whether eye movements during a risk driving detection task are able to predict risk situations.Methods: Thirty-two normally sighted subjects (15 female) saw 20 clips of recorded driving scenes while their gaze was tracked. They reported when they considered the car should brake, anticipating any hazard. We applied both a mixed-effect logistic regression model and feedforward neural networks between hazard reports and eye movement descriptors.Results: All subjects reported at least one major collision hazard in each video (average 3.5 reports). We found that hazard situations were predicted by larger saccades, more and longer fixations, fewer blinks, and a smaller gaze dispersion in both horizontal and vertical dimensions. Performance between models incorporating a different combination of descriptors was compared running a test equality of receiver operating characteristic areas. Feedforward neural networks outperformed logistic regressions in accuracies. The model including saccadic magnitude, fixation duration, dispersion in x, and pupil returned the highest ROC area (0.73).Conclusion: We evaluated each eye movement descriptor successfully and created separate models that predicted hazard events with an average efficacy of 70% using both logistic regressions and feedforward neural networks. The use of driving simulators and hazard detection videos can be considered a reliable methodology to study risk prediction. (C) 2020 Elsevier Ltd. All rights reserved.
机译:背景:许多研究发现眼球运动行为提供了心理活动的实时指标。嵌入在自治车辆中的风险管理架构未能包括人类认知方面。我们开始评估风险驾驶检测任务期间的眼部运动是否能够预测风险情况。方法:三十二个常见的受试者(15个雌性)在跟踪他们的凝视时锯20个记录的驾驶场景剪辑。他们报告他们认为汽车应该制动,期待任何危险。我们在危险报告和眼睛运动描述符之间应用了混合效果逻辑回归模型和前馈神经网络。结果:所有受试者报告了每个视频中至少一个主要的碰撞危险(平均3.5报告)。我们发现,通过较大的扫视,更长的固定,眨眼更少,眨眼性较少,以及水平和垂直尺寸的较小凝视分散。将包含不同描述符组合的模型之间的性能进行比较运行接收器操作特征区域的测试平等。前馈神经网络在精度上表现优于逻辑回归。该模型包括扫视幅度,固定持续时间,X和瞳孔的分散率返回最高的ROC区域(0.73)。结论:我们评估了每种眼睛运动描述符,成功地创建了使用两者70%的平均功效的单独模型Logistic回归和前馈神经网络。驾驶模拟器和危险检测视频的使用可以被认为是研究风险预测的可靠方法。 (c)2020 elestvier有限公司保留所有权利。

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