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A Deep Learning Approach to Detect Distracted Drivers Using a Mobile Phone

机译:一种深度学习方法,可使用手机检测分心的驾驶员

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Detect distracted driver is an essential factor to maintain road safety and avoid the risk of accidents and deaths. Studies of the World Health Organization shows that the distraction caused by mobile phones can increase the crash risk by up to 400%. This paper proposes a convolutional neural network that is able to monitor drivers video surveillance, more specifically detect and classify when the driver is using a cell phone. The experiments show an impressive accuracy, achieving up 99% of accuracy detecting distracted driver.
机译:发现分心的驾驶员是维持道路安全并避免发生事故和死亡的风险的重要因素。世界卫生组织的研究表明,由手机引起的干扰可能使撞车风险增加多达400%。本文提出了一种卷积神经网络,该网络能够监视驾驶员的视频监控,更具体地讲,当驾驶员使用手机时,可以进行检测和分类。实验显示出令人印象深刻的准确度,检测到分心的驾驶员的准确率高达99%。

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