使用Inception V1的分心驾驶员检测

Ms. Prathipati, Silpa Chaitanya, Bhagya, Rafiya Kowsar Sk, Joshna Rani
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摘要

造成车祸的一个主要因素是司机注意力不集中。为了减少交通事故,提高交通安全,研究人员提出了一种通过摄像头观察司机的各种分心行为,从而检测司机分心行为的“分心检测系统”。为了开发实际驾驶场景并测试分心检测算法,正在构建辅助驾驶试验台。这些司机的正常驾驶姿势和分心驾驶姿势的照片都被采集到作者的数据集中。VGG-16、AlexNet、GoogleNet和残差网络是在集成图形处理单元的平台上开发和评估的四个深度卷积神经网络。开发了语音警告系统,当驾驶员不注意道路时通知驾驶员。由于VGG-16是一个巨大的网络,需要更多的时间来训练它的参数。另一方面,在方向盘挡住左手的情况下,“向左边发短信”被错误地归类为“安全驾驶”。根据实验结果,所提出的策略比基线方法效果更好,基线方法在全连接层中只使用256个神经元。GoogleNet使用inception模块,用于并行运行多个过滤器大小的多个操作(池化,卷积),因此不需要面对任何权衡。训练参数花费的时间更少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distracted Driver Detection using Inception V1
A major contributing factor in car accidents is driver distraction. This research suggests a distraction detecting system for drivers that detects various forms of distractions by watching the driver with a camera in an effort to decrease traffic accidents and enhance transportation safety. To develop practical driving situations and to test the algorithms for distracted detection, an assisted driving testbed is being constructed. Pictures of the drivers in both their regular and distracted driving postures were taken for the authors’ dataset. The VGG-16, AlexNet, GoogleNet, and residual network are four deep convolutional neural networks that are developed and assessed on a platform with integrated graphics processing units. A voice warning system is developed to notify the driver when they are not paying attention to the road. As VGG-16 is a huge network, it takes more time to train its parameters. On the other hand, ‘texting left’ was misclassified with ‘safe driving’ in some scenarios when the steering wheel blocked the left hand. According to experimental findings, the proposed strategy works better than the baseline approach, which only uses 256 neurons in the fully linked layers. GoogleNet uses inception module, used for running multiple operations (pooling, convolution) with multiple filter sizes in parallel so that it is not necessary to face any trade-off. It takes less time to train its parameters.
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