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A machine learning approach to infer on-street parking occupancy based on parking meter transactions

机译:基于停车米交易的机器学习方法推断街边停车占用

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Cruising for parking is not only stressful task for most drivers but also increases congestion and emissions. Therefore smart parking guidance systems are gaining increasing interest from researchers and city councils. These systems mostly rely on expensive and not well scalable technology like real time parking sensors or camera systems. In this paper we propose a deep learning architecture that predicts the current number of parking cars at different locations based on digital meter payment transactions. We outperform simple baseline models as well as a state of the art probabilistic approach from the literature. Transactional data does not directly translate to parking occupancy since not all people stick to their paid duration or pay at all. We therefore discuss the reliability of our method on different datasets and spatial granularities. Although our model is not as reliable as sensor data, especially for small parking zones, we find that our methodology provides an inexpensive way of inferring on-street parking occupancy and enable meaningful smart parking services.
机译:对于大多数司机而言,巡航不仅是压力的任务,而且增加了拥堵和排放。因此,智能停车导向系统正在增加研究人员和城市议会的兴趣。这些系统主要依赖于昂贵的且不良好的可扩展技术,如实时停车传感器或相机系统。在本文中,我们提出了一种深入的学习架构,其基于数字仪表付款交易预测不同位置的当前停车车数。我们优于简单的基线模型以及文献中的艺术概率方法的状态。交易数据并不直接转化为停车占用率,因为并非所有人都坚持为他们的薪酬持续时间或支付。因此,我们讨论了我们对不同数据集和空间粒度的方法的可靠性。虽然我们的模型与传感器数据不那么可靠,但特别是对于小型停车区,我们发现我们的方法提供了一种廉价的方式,可在街边停车入住,并实现有意义的智能停车服务。

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