Darnet: a deep learning solution for distracted driving detection

Christopher Streiffer, R. Raghavendra, Theophilus A. Benson, M. Srivatsa
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引用次数: 68

Abstract

Distracted driving is known to be the leading cause of motor vehicle accidents. With the increase in the number of IoT devices available within vehicles, there exists an abundance of data for monitoring driver behavior. However, designing a system around this goal presents two key challenges - how to concurrently collect data spanning multiple IoT devices, and how to jointly analyze this multimodal input. To that end, we present a unified data collection and analysis framework, DarNet, capable of detecting and classifying distracted driving behavior. DarNet consists of two primary components: a data collection system and an analytics engine. Our system takes advantage of advances in machine learning (ML) to classify driving behavior based on input sensor data. In our system implementation, we collect image data from an inward facing camera, and Inertial Measurement Unit (IMU) data from a mobile device, both located within the vehicle. Using deep learning techniques, we show that DarNet achieves a Top-1 classification percentage of 87.02% on our collected dataset, significantly outperforming our baseline model of 73.88%. Additionally, we address the privacy concerns associated with collecting image data by presenting an alternative framework designed to operate on down-sampled data which produces a Top-1 classification percentage of 80.00%.
Darnet:用于分心驾驶检测的深度学习解决方案
众所周知,分心驾驶是机动车事故的主要原因。随着车辆内可用物联网设备数量的增加,存在大量用于监控驾驶员行为的数据。然而,围绕这一目标设计系统提出了两个关键挑战——如何同时收集跨多个物联网设备的数据,以及如何联合分析这种多模态输入。为此,我们提出了一个统一的数据收集和分析框架,DarNet,能够检测和分类分心驾驶行为。DarNet由两个主要组件组成:数据收集系统和分析引擎。我们的系统利用机器学习(ML)的先进技术,根据输入的传感器数据对驾驶行为进行分类。在我们的系统实现中,我们从一个面向内的摄像头收集图像数据,从一个移动设备收集惯性测量单元(IMU)数据,两者都位于车辆内。使用深度学习技术,我们发现DarNet在我们收集的数据集上实现了87.02%的Top-1分类百分比,显著优于我们的基线模型73.88%。此外,我们通过提出一个替代框架来解决与收集图像数据相关的隐私问题,该框架旨在对下采样数据进行操作,从而产生80.00%的Top-1分类百分比。
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