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Driver Distraction Recognition using 3D Convolutional Neural Networks

机译:使用3D卷积神经网络的驾驶员注意力分散识别

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The number of road accidents and deaths due to distracted driving is continuously increasing in recent years. Usage of mobile phones, talking to passengers and reaching behind to take something while driving are some of the reasons due to which drivers may get distracted. Distractions are of numerous types, out of which we focus on manual distractions which are based on the posture of the driver. We have considered two datasets that incorporate drivers engaging in several different distracting behaviors using left and/or right hands seen from a camera. In this research, we have derived a benefit from temporal information by using a 3D convolutional neural network and optical flow to improve the driver distraction monitoring task. Results have shown that fine-tuning a pertained network on Kinetics dataset for learning driver action achieves a detection accuracy about 90% on State Farm dataset, which outperforms other methods on the same dataset.
机译:近年来,由于分心驾驶而导致的道路交通事故和死亡人数不断增加。使用手机,与乘客交谈以及在开车时伸手去拿东西是驾驶员可能分心的一些原因。分心的类型多种多样,其中我们主要关注基于驾驶员姿势的手动分心。我们考虑了两个数据集,这些数据集合并了使用从摄像机看到的左手和/或右手从事几种不同的干扰行为的驾驶员。在这项研究中,我们通过使用3D卷积神经网络和光流来改善驾驶员注意力分散监测任务,从而从时间信息中受益。结果表明,对Kinetics数据集上的相关网络进行微调以学习驾驶员的行为,可以在State Farm数据集上实现约90%的检测精度,这优于同一数据集上的其他方法。

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