JOURNAL ARTICLE

TMN: Trajectory Matching Networks for Predicting Similarity

Peilun YangHanchen WangDefu LianYing ZhangLu QinWenjie Zhang

Year: 2022 Journal:   2022 IEEE 38th International Conference on Data Engineering (ICDE) Pages: 1700-1713

Abstract

Trajectory similarity computation is the cornerstone of many applications in the field of trajectory data analysis. To cope with the high time complexity of calculating exact similarity between trajectories, learning-based models have been developed for a good trade-off between the similarity computing time and the accuracy of the learned similarity. As each trajectory can be represented by a fixed-length vector regardless of the size of the trajectory, the similarity computation among the trajectories is highly time-efficient. Nevertheless, we observe that these learning-based models are designed based on recurrent neural networks (RNN), which cannot properly capture the correlations among the trajectories. Moreover, these learning-based models simply use the similarity scores of the pairs of trajectories in the training for a specific similarity metric, while a vital piece of information is neglected: the mappings of the points between two trajectories are readily available when the similarity score is calculated. These motivate us to design a new learning-based model, named TMN, based on attention networks, aiming to significantly improve the accuracy such that a better trade-off between the similarity computing time and the accuracy can be achieved. The proposed matching mechanism associates points across trajectories by computing attention weights of point pairs so that TMN learns to simulate similarity computation between the trajectory pair. Apart from taking interactions between trajectories into consideration, the sequential information of each individual trajectory is also considered, thereby making full use of spatial features of a pair of trajectories. We evaluate various approaches on real-life datasets under extensive trajectory distance metrics. Experimental results demonstrate that TMN outperforms state-of-the-art methods in terms of accuracy. Besides, ablation studies prove the effectiveness of our novel matching mechanism.

Keywords:
Similarity (geometry) Trajectory Computer science Matching (statistics) Computation Artificial intelligence Metric (unit) Artificial neural network Pattern recognition (psychology) Algorithm Mathematics Image (mathematics)

Metrics

24
Cited By
3.37
FWCI (Field Weighted Citation Impact)
54
Refs
0.94
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Data Management and Algorithms
Physical Sciences →  Computer Science →  Signal Processing
Time Series Analysis and Forecasting
Physical Sciences →  Computer Science →  Signal Processing
Human Mobility and Location-Based Analysis
Social Sciences →  Social Sciences →  Transportation

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