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A Novel Ensemble Learning Approach of Deep Learning Techniques to Monitor Distracted Driver Behaviour in Real Time

机译:一种新的精心学习方法的深度学习技术,实时监测分心的驾驶员行为

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Driver distraction causes one of the major problems in road safety and accidents. According to the World Health Organization (WHO), over 285,000 estimated accidents happened as a result of distracted drivers per year. To address such a fatal issue and considering the future of Intelligent Transport System, we have proposed a novel ensemble learning approach based on deep learning techniques for detecting a distracted driver. In the proposed approach, we have fine-tuned the Faster-RCNN for detecting the objects involved in distracting the driver during driving and achieved 97.7% validation accuracy. Moreover, to make the prediction strong and reduced the false positive, pose points of the driver have also extracted. By using those pose points, we make sure that we detect only those objects which are directly associated with the driver’s distraction. The interactive association of various objects with the driver has calculated using the intersection over the union between the detected object and the current posture features of the driver. Our proposed ensemble learning technique has achieved over 92.2% accuracy which is far better than previously proposed models. The proposed method is not only time-efficient, robust, but cost-efficient as well. Such a model not only can ensure road safety as well as help Governments to save resources being spent on monetary losses.
机译:司机分心导致道路安全和事故中的主要问题之一。根据世界卫生组织(世卫组织)的说法,每年分散注意力的司机而发生了超过285,000次估计的事故。为了解决如此致命的问题并考虑到智能运输系统的未来,我们提出了一种基于深度学习技术的新型集合学习方法,用于检测分散注意力的驾驶员。在拟议的方法中,我们已经精确调整了更快的RCNN,用于检测在驾驶期间分散驱动程序的对象并实现了97.7%的验证精度。此外,为了使预测强并降低假阳性,驾驶员的姿势点也提取。通过使用那些姿势点,我们确保只检测到与驾驶员分散关联的那些对象。使用驾驶员的各种对象的交互式协会已经使用与检测到的对象之间的联轴器上的交叉点和驱动器的当前姿势特征来计算。我们所提出的集合学习技术已经实现了超过92.2%的准确性,比以前提出的模型更好。该方法不仅是节省的,稳健,而且具有成本效益。这样的模型不仅可以确保道路安全以及帮助政府拯救资源正在花在货币损失上。

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