Inicio  /  Applied Sciences  /  Vol: 13 Par: 23 (2023)  /  Artículo
ARTÍCULO
TITULO

Map Matching Based on Seq2Seq with Topology Information

Yulong Bai    
Guolian Li    
Tianxiu Lu    
Yadong Wu    
Weihan Zhang and Yidan Feng    

Resumen

Most existing road network matching algorithms are designed based on previous rules and do not fully utilize the potential of big data and historical tracks. To solve this problem, we introduce a new road network matching algorithm based on deep learning and using the topology information of the road network. Taking inspiration from the sequence-to-sequence (seq2seq) model popular in natural language processing, our algorithm builds multiple grid-dependent dictionaries based on the topology of road networks. Then the Byte Pair Encoding (BPE) algorithm is used to compress the grid dictionary, which effectively restricts the output range. A Bidirectional gated loop unit (Bi-GRU) with attention mechanisms is used as a recurrent neural network to capture information from a sequence of trajectory points. The model output feedback obtained by training the road network on Yibin City and the empirical evidence of the comparison in this experiment prove the effectiveness of the algorithm. When juxtaposed with similar algorithms, it shows superior accuracy and faster training speeds in road networks matching different scenarios.

Palabras claves

 Artículos similares

       
 
Xiaokai Mu, Guan Yue, Nan Zhou and Congcong Chen    
Simultaneous localization and mapping (SLAM) is an active localization method for Autonomous Underwater Vehicle (AUV), and it can mainly be used in unknown and complex areas such as coastal water, harbors, and wharfs. This paper presents a practical occu... ver más

 
Georgia Ayfantopoulou, Marios Nikolaos Militsis, Josep Maria Salanova Grau and Socrates Basbas    
Revista: Information

 
Guglielmo Papini, Francisco Javier Dores Piuma, Nicolás Faedo, John V. Ringwood and Giuliana Mattiazzo    
This paper presents a data-driven model reduction by moment-matching approach to construct control-oriented models for a point absorber device. The methodology chosen and developed generates models which are input-to-state linear, with any nonlinear beha... ver más

 
Taoyong Li, Chunlei Xia, Ming Yu, Panpan Tang, Wei Wei and Dongmei Zhang    
Automatic charging for electric vehicles has broad development prospects for meeting the personalized service experience of users while overcoming the inherent safety hazards. An identification and positioning approach suitable for engineering applicatio... ver más
Revista: Applied Sciences

 
Can Cui, Jiwei Qin and Qiulin Ren    
Representation learning-based collaborative filtering (CF) methods address the linear relationship of user-items with dot products and cannot study the latent nonlinear relationship applied to implicit feedback. Matching function learning-based CF method... ver más
Revista: Applied Sciences