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Traffic Speed Data Imputation Method Based on Tensor Completion

机译:基于Tensor完成的流量速度数据载旋方法

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Traffic speed data plays a key role in Intelligent Transportation Systems (ITS); however, missing traffic data would affect the performance of ITS as well as Advanced Traveler Information Systems (ATIS). In this paper, we handle this issue by a novel tensor-based imputation approach. Specifically, tensor pattern is adopted for modeling traffic speed data and then High accurate Low Rank Tensor Completion (HaLRTC), an efficient tensor completion method, is employed to estimate the missing traffic speed data. This proposed method is able to recover missing entries from given entries, which may be noisy, considering severe fluctuation of traffic speed data compared with traffic volume. The proposed method is evaluated on Performance Measurement System (PeMS) database, and the experimental results show the superiority of the proposed approach over state-of-the-art baseline approaches.
机译:交通速度数据在智能交通系统(其)中扮演关键作用; 但是,缺少的流量数据会影响其其和高级旅行者信息系统(ATIS)的性能。 在本文中,我们通过一种基于新的张量的避难所方法处理这个问题。 具体地,采用张量图案来建模业务速度数据,然后采用高精度的低等级张力完成(HALRTC),一种有效的张量完成方法,用于估计缺失的流量数据。 这种方法能够从给定条目中恢复丢失的条目,这可能是嘈杂的,这考虑到流量速度数据的严重波动与业务量相比。 在绩效测量系统(PEMS)数据库中评估所提出的方法,实验结果表明,拟议的方法的优势在最先进的基线方法上。

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