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Complementary Deep and Shallow Learning with Boosting for Public Transportation Safety

机译:互补和浅浅的学习提升公共交通安全

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摘要

To monitor road safety, billions of records can be generated by Controller Area Network bus each day on public transportation. Automation to determine whether certain driving behaviour of drivers on public transportation can be considered safe on the road using artificial intelligence or machine learning techniques for big data analytics has become a possibility recently. Due to the high false classification rates of the current methods, our goal is to build a practical and accurate method for road safety predictions that automatically determine if the driving behaviour is safe on public transportation. In this paper, our main contributions include (1) a novel feature extraction method because of the lack of informative features in raw CAN bus data, (2) a novel boosting method for driving behaviour classification (safe or unsafe) to combine advantages of deep learning and shallow learning methods with much improved performance, and (3) an evaluation of our method using a real-world data to provide accurate labels from domain experts in the public transportation industry for the first time. The experiments show that the proposed boosting method with our proposed features outperforms seven other popular methods on the real-world dataset by 5.9% and 5.5%.
机译:为了监控道路安全,每天可以在公共交通每天由控制器区域网络总线产生数十亿记录。自动化以确定公共交通司机的某些驾驶行为是否可以在道路上被认为是安全的,使用人工智能或机器学习技术进行大数据分析已成为最近可能的可能性。由于目前方法的高伪分类率,我们的目标是为自动确定驾驶行为在公共交通方面安全的道路安全预测的实用和准确的方法。在本文中,我们的主要贡献包括(1)一种新颖的特征提取方法,因为原始CAN总线数据中缺乏信息特征,(2)一种用于驾驶行为分类(安全或不安全)的新型升压方法,以结合深度的优势学习和浅学习方法具有大大提高的性能,(3)对我们使用真实数据的方法评估,首次使用公共交通行业的域专家提供准确的标签。该实验表明,拟议的促进方法具有我们提出的功能,优于现实世界数据集的七种其他普遍的方法,达到5.9%和5.5%。

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