Official WebsiteCampus Network Service Website
教师个人主页 personal homepage
Ben Associate professor
Personal Information
Supervisor of Master's Candidates
Name (English):Ben
Name (Pinyin):duanpeibo
E-Mail:
Date of Employment:2020-09-16
Education Level:With Certificate of Graduation for Doctorate Study
Gender:Male
Professional Title:Associate professor
Status:Employed
Discipline:
Computer Applications Technology
智能科学与技术
The Last Update Time:--
Open time:--
Bayesian Path Inference Using Sparse GPS Samples With Spatio-Temporal Constraints
Release time:2022-04-08Hits:
First Author: Jun Kang
Co author: Ben,Ke Yan
Journal: IEEE Transactions on Intelligent Transportation Systems
DOI number: 10.1109/TITS.2021.3113710
Abstract: Path inference aims to reveal missing paths given a few number of GPS samples associated with a moving object by exploiting the topology of road network and statistical information of historical GPS trajectories, and plays a vital role in data preprocessing of location based information services. But, in practice path inference severely suffers from the data sparsity as well as the randomness of drivers path selection behaviors. In this paper, we propose a novel Bayesian path inference model subject to spatiotemporal constraints by taking into account the drivers path selection behaviors. To be specific, the problem of path inference is cast as the problem of searching K most probable candidate paths according to the joint posterior selection probabilities of candidate paths. When estimating model parameters, we use the frequency of each road segment in the historical GPS trajectories instead of that of road segment transfers to mitigate the influence of data sparsity. In addition, both spatiotemporal constraints and probability thresholds are introduced to narrow the search space, which significantly improves the time efficiency. The experiments are conducted using practical data and show that the proposed model is significantly superior to three existing popular models. When the GPS sampling interval varies from 1 minute to 5 minutes, the accuracy of the proposed method is 0.94, 0.91, 0.86, 0.80 and 0.74, and the Jaccard similarity 0.89, 0.85, 0.83, 0.80 and 0.75 respectively, the average improvement in accuracy rises from 3.68% to 18.69% and that in the Jaccard similarity from 4.56% to 18.42%
Key Words: Roads;Hidden Markov models;Global Positioning System;Trajectory;Data models;Spatiotemporal phenomena;Predictive models
Page Number: 1 - 13
Translation or Not: no
Other Contact Information
PostalAddress:
Telephone:
Email:
Click: