Vehicle trajectory prediction based on hidden Markov model

Loading...
Thumbnail Image

Authors

Ye, Ning
Zhang, Yingya
Wang, Ruchuan
Malekian, Reza

Journal Title

Journal ISSN

Volume Title

Publisher

KSII

Abstract

In Intelligent Transportation Systems (ITS), logistics distribution and mobile e-commerce, the real-time, accurate and reliable vehicle trajectory prediction has significant application value. Vehicle trajectory prediction can not only provide accurate location-based services, but also can monitor and predict traffic situation in advance, and then further recommend the optimal route for users. In this paper, firstly, we mine the double layers of hidden states of vehicle historical trajectories, and then determine the parameters of HMM (hidden Markov model) by historical data. Secondly, we adopt Viterbi algorithm to seek the double layers hidden states sequences corresponding to the just driven trajectory. Finally, we propose a new algorithm (DHMTP) for vehicle trajectory prediction based on the hidden Markov model of double layers hidden states, and predict the nearest neighbor unit of location information of the next k stages. The experimental results demonstrate that the prediction accuracy of the proposed algorithm is increased by 18.3% compared with TPMO algorithm and increased by 23.1% compared with Naive algorithm in aspect of predicting the next k phases' trajectories, especially when traffic flow is greater, such as this time from weekday morning to evening. Moreover, the time performance of DHMTP algorithm is also clearly improved compared with TPMO algorithm.

Description

Keywords

Trajectory prediction, Hidden Markov model (HMM), Double layers hidden states, The nearest neighbor unit, Intelligent transport systems (ITS)

Sustainable Development Goals

Citation

Ye, N, Zhang, YY, Wang, R & Malekian, R 2016, 'Vehicle trajectory prediction based on hidden Markov model', KSII Transactions on Internet and Information Systems, vol. 10, no. 7, pp. 3150-3170.