论文标题
使用卷积神经网络检测分心的驱动器
Detection of Distracted Driver using Convolution Neural Network
论文作者
论文摘要
由于汽车事故,每年有超过5000万辆汽车的销售,我们选择了这一空间。印度在道路事故中占全球死亡的11%。驾驶员造成了78%的事故。发展中国家的道路安全问题是一个主要问题,人类行为被归因于道路安全问题的主要原因和加速器之一。驾驶员分心已被确定为事故的主要原因。分心可能是由于移动使用,饮酒,操作工具,面部化妆,社交互动等原因而引起的。对于该项目的范围,我们将专注于构建高效的ML模型,以使用计算机视觉在运行时分散不同的驱动程序。我们还将分析模型的整体速度和可扩展性,以便能够在边缘设备上进行设置。我们使用CNN,VGG-16,Restnet50和CNN集合来预测这些类。
With over 50 million car sales annually and over 1.3 million deaths every year due to motor accidents we have chosen this space. India accounts for 11 per cent of global death in road accidents. Drivers are held responsible for 78% of accidents. Road safety problems in developing countries is a major concern and human behavior is ascribed as one of the main causes and accelerators of road safety problems. Driver distraction has been identified as the main reason for accidents. Distractions can be caused due to reasons such as mobile usage, drinking, operating instruments, facial makeup, social interaction. For the scope of this project, we will focus on building a highly efficient ML model to classify different driver distractions at runtime using computer vision. We would also analyze the overall speed and scalability of the model in order to be able to set it up on an edge device. We use CNN, VGG-16, RestNet50 and ensemble of CNN to predict the classes.