| Home | KSAE | E-Submission | Sitemap | Contact Us |  
top_img
International Journal of Automotive Technology > Volume 20(2); 2019 > Article
International Journal of Automotive Technology 2019;20(2): 255-263.
doi: https://doi.org/10.1007/s12239-019-0025-8
ROBUST LANE-CHANGE RECOGNITION BASED ON AN ADAPTIVE HIDDEN MARKOV MODEL USING MEASUREMENT UNCERTAINTY
Seungjin Park, Wonteak Lim, Myoungho Sunwoo
Hanyang University
PDF Links Corresponding Author.  Myoungho Sunwoo , Email. msunwoo@hanyang.ac.kr
ABSTRACT
Lane-changing of surrounding vehicles is a risky situation because vehicle accidents can be easily caused by driver's unawareness of the surrounding vehicle. Much research has conducted on lane-change recognition (LCR) to avoid these vehicle accidents by warning drivers. LCR is a technology to estimate lane-changing behaviors of surrounding vehicles from observation data: position, velocity, and lane information. Since these observation data change continuously during lanechanging, most research for LCR has used time series data based on hidden Markov model (HMM). A challenging point of LCR is that HMM could make false positives in LCR when the observation data include uncertainties such as sensor noise and object detection error. Previous research has tried to process observation data by using Bayesian filter. However, the approach cannot remove all data uncertainties. This paper proposes a method for using observation uncertainty through an adaptive HMM for LCR. In the method, HMM models are modified in real time based on data covariance to filter data with high uncertainty. For evaluation of the algorithm, it was tested through 71 lane-changing cases in real driving situations. The results show that the proposed method enhanced the recognition accuracy by 25.3 % (63.3 % → 88.7 %) than a previous LCR method.
Key Words: Lane-change recognition, Hidden Markov model, Automotive applications, Observation uncertainty
TOOLS
Preview  Preview
Full text via DOI  Full text via DOI
Download Citation  Download Citation
  Print
Share:      
METRICS
13
Scopus
5,543
View
77
Download
Related article
Editorial Office
21 Teheran-ro 52-gil, Gangnam-gu, Seoul 06212, Korea
TEL: +82-2-564-3971   FAX: +82-2-564-3973   E-mail: manage@ksae.org
About |  Browse Articles |  Current Issue |  For Authors and Reviewers
Copyright © The Korean Society of Automotive Engineers.                 Developed in M2PI
Close layer
prev next