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Low-rank representation based traffic data completion method

机译:基于低秩表示的交通数据完成方法

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Intelligent Transportation Systems (ITS) plays a significant role in the traffic management, i.e. traffic jam prediction, route guidance. Due to the hardware failure or data transformation failure, some traffic observation data may be occasionally missed, which seriously affect intelligent transportation information service. So, the completion of traffic observation data has now become an issue that requires to be concerned and solved. By analyzing the traffic history data, we find that traffic data tend to have strong spatio-temporal correlation. Considering this feature, we propose a new low-rank representation based traffic data completion method. To further enhance the local correlation, we introduce an ordered regulation into our proposed method. We also give an efficient solution to our proposed methods. In order to verify the performance of our methods, some traffic data completion experiments are conducted on the Beijing metropolitan road speed dataset and the capital airport highway microwave dataset. Experimental results show that the proposed methods are superior to other state-of-the-art traffic data completion methods.
机译:智能交通系统(ITS)在交通管理(即交通拥堵预测,路线引导)中起着重要作用。由于硬件故障或数据转换故障,有时会丢失一些交通观察数据,严重影响智能交通信息服务。因此,交通观察数据的完成现在已经成为需要关注和解决的问题。通过分析交通历史数据,我们发现交通数据往往具有很强的时空相关性。考虑到此功能,我们提出了一种新的基于低秩表示的交通数据完成方法。为了进一步增强局部相关性,我们在我们提出的方法中引入了有序的规则。我们还为我们提出的方法提供了有效的解决方案。为了验证我们方法的性能,对北京城市道路速度数据集和首都机场高速公路微波数据集进行了一些交通数据完成实验。实验结果表明,所提出的方法优于其他最新的交通数据完成方法。

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