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Learning to Detect Adverse Traffic Event from Noisily Labeled Data

机译:学习从带有标签的数据中检测不良交通事件

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摘要

Many deployed traffic incident detection systems use algorithms that require significant manual tuning. We seek machine learning incident detection solutions that reduce the need for manual adjustments by taking advantage of massive databases of traffic sensor network measurements. First, we show that a rather straightforward supervised learner based on the SVM model outperforms a fixed detection model used by state-of-the-art traffic incident detectors. Second, we seek further improvements of learning performance by correcting misaligned incident times in the training data. The misalignment is due to an imperfect incident logging procedure. We propose a label realignment model based on a dynamic Bayesian network to re-estimate the correct position (time) of the incident in the data. Training on the automatically realigned data consistently leads to improved detection performance in the low false positive region.
机译:许多已部署的交通事件检测系统使用的算法需要大量的手动调整。我们寻求机器学习事件检测解决方案,以利用流量传感器网络测量的海量数据库来减少手动调整的需求。首先,我们展示了一个基于SVM模型的相当直接的受监督学习者,其性能优于最新交通事故检测器使用的固定检测模型。其次,我们通过纠正训练数据中未对准的事件时间来寻求学习性能的进一步提高。未对准是由于不完善的事件记录程序造成的。我们提出了基于动态贝叶斯网络的标签重排模型,以重新估计事件在数据中的正确位置(时间)。对自动重新对齐的数据进行的训练始终可以提高在低误报区域的检测性能。

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