Research on Traffic Data Recovery Based on Tensor Filling and Tensor Matrix Association Analysis

Shengbao Yang, Yi Xiang, Wei He, Bingbing Song, Jiangcheng Xie, Jun Zhou, Jing He
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引用次数: 1

Abstract

Traffic data is the data foundation for smart transportation construction. However, due to inclement weather and equipment damage, there are often data missing during the collection of traffic data, which severely restricts smart transportation construction progress. Therefore, traffic data recovery has become an urgent problem in the field of intelligent transportation. Aiming at the problem that the recovery accuracy of existing traffic data recovery methods declines sharply under extreme missing conditions, this paper proposes a traffic data recovery model based on tensor filling and tensor matrix association analysis. The experimental results combined with real taxi GPS positioning data and point of interesting (POI) data of Kunming show that the traffic data recovery model proposed in this paper can significantly improve the recovery accuracy of missing data and maintain good stability in the case of extreme data missing.
基于张量填充和张量矩阵关联分析的交通数据恢复研究
交通数据是智能交通建设的数据基础。然而,由于恶劣天气和设备损坏,交通数据采集过程中经常出现数据缺失的情况,严重制约了智能交通的建设进度。因此,交通数据恢复已成为智能交通领域亟待解决的问题。针对现有交通数据恢复方法在极端缺失条件下恢复精度急剧下降的问题,提出了一种基于张量填充和张量矩阵关联分析的交通数据恢复模型。结合昆明市真实出租车GPS定位数据和兴趣点(POI)数据的实验结果表明,本文提出的交通数据恢复模型能够显著提高缺失数据的恢复精度,并在极端数据缺失的情况下保持良好的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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