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Automated detection of helmet on motorcyclists from traffic surveillance videos: a comparative analysis using hand-crafted features and CNN

机译:来自交通监测视频的摩托车手盔上的自动检测:使用手工制作功能和CNN的比较分析

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The higher mortality rate in motorcycle accidents is attributed to negligence in wearing a helmet by two-wheeler riders. Identification of helmetless riders in real-time is an essential task to prevent the occurrence of such events. This paper presents an automated system to identify motorcyclists without a helmet from traffic surveillance videos in real-time. The problem becomes more challenging when computational resources are limited. We have compiled a custom dataset for developing an automated helmet detection algorithm. The proposed system uses a two-stage classifier to extract motorcycles from surveillance videos. Detected motorcycles are further fed to a helmet identification stage. We present two algorithms for classifying riders with and without a helmet, one based on hand-crafted features and the other based on deep convolutional neural network (CNN). Our experiments show that the proposed CNN model gives the best performance in terms of accuracy while the feature-based model gives faster detection. Most importantly, to ensure the light-weightiness of the proposed system all the computations are performed in CPUs only.
机译:摩托车事故中较高的死亡率归因于两轮车骑手佩戴头盔的疏忽。实时识别无核骑士是防止发生此类事件的重要任务。本文介绍了一个自动化系统,用于识别摩托车手,而实时没有来自流量监视视频的头盔。当计算资源有限时,问题变得更具挑战性。编译了一个用于开发自动头盔检测算法的自定义数据集。所提出的系统使用两阶段分类器从监视视频中提取摩托车。检测到的摩托车进一步馈送到头盔识别阶段。我们提出了两种用于对骑手进行分类,其中没有头盔,一个基于手工制作的特征,另一个基于深度卷积神经网络(CNN)。我们的实验表明,所提出的CNN模型在准确性方面提供了最佳性能,而基于特征的模型提供更快的检测。最重要的是,为了确保所提出的系统的轻量度,所有计算只在CPU中执行。

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