Cognitive Competence Improvement for Autonomous Vehicles: A Lane Change Identification Model for Distant Preceding Vehicles

The motion status recognition of the preceding vehicle in a long-distance region is a requirement for autonomous vehicles to make appropriate decisions and increase their comprehension of the environment. At present, the lane change behavior of the leading vehicle at a short distance is detected usi...

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Main Authors: Chang Wang, Qinyu Sun, Zhen Li, Hongjia Zhang, Kaili Ruan
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8744271/
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author Chang Wang
Qinyu Sun
Zhen Li
Hongjia Zhang
Kaili Ruan
author_facet Chang Wang
Qinyu Sun
Zhen Li
Hongjia Zhang
Kaili Ruan
author_sort Chang Wang
collection DOAJ
description The motion status recognition of the preceding vehicle in a long-distance region is a requirement for autonomous vehicles to make appropriate decisions and increase their comprehension of the environment. At present, the lane change behavior of the leading vehicle at a short distance is detected using stereo cameras and LiDAR. However, the short detection distance (about 100 m) does not meet the requirements of high-speed driving of autonomous vehicles on expressways; this is a fundamental problem limiting the development of autonomous vehicles exhibiting human-like behavior. In this paper, a comprehensive model consisting of a back-propagation (BP) neural network model optimized by a particle swarm optimization (PSO) algorithm, and a continuous identification model is developed based on the results of naturalistic on-road experiments using millimeter-wave radar data. By considering different time-to-lane crossings (TLCs), the PSO-BP neural network model is trained using real vehicle lane change data and implemented when the TLC of the leading vehicle is longer than 1.0 s. In contrast, when the TLC is less than 1 s, the continuous recognition model of the TLC is used. By comparison with the BP neural network model, the recognition accuracy rate of the proposed model is increased from 80% to 87% after the PSO optimization for a time window of 1.0 s; these results meet the recognition requirements of the autonomous driving systems for distant targets. The findings of this paper improve the cognitive competence and safety of autonomous driving systems.
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spelling doaj.art-78a4df3b3ab1495693ae8c70864c92f62022-12-21T23:48:47ZengIEEEIEEE Access2169-35362019-01-017832298324210.1109/ACCESS.2019.29245578744271Cognitive Competence Improvement for Autonomous Vehicles: A Lane Change Identification Model for Distant Preceding VehiclesChang Wang0https://orcid.org/0000-0003-3531-1215Qinyu Sun1https://orcid.org/0000-0002-6446-0570Zhen Li2https://orcid.org/0000-0002-4215-0774Hongjia Zhang3Kaili Ruan4School of Automobile, Chang’an University, Xi’an, ChinaSchool of Automobile, Chang’an University, Xi’an, ChinaSchool of Automobile, Chang’an University, Xi’an, ChinaSchool of Automobile, Chang’an University, Xi’an, ChinaSchool of Automobile, Chang’an University, Xi’an, ChinaThe motion status recognition of the preceding vehicle in a long-distance region is a requirement for autonomous vehicles to make appropriate decisions and increase their comprehension of the environment. At present, the lane change behavior of the leading vehicle at a short distance is detected using stereo cameras and LiDAR. However, the short detection distance (about 100 m) does not meet the requirements of high-speed driving of autonomous vehicles on expressways; this is a fundamental problem limiting the development of autonomous vehicles exhibiting human-like behavior. In this paper, a comprehensive model consisting of a back-propagation (BP) neural network model optimized by a particle swarm optimization (PSO) algorithm, and a continuous identification model is developed based on the results of naturalistic on-road experiments using millimeter-wave radar data. By considering different time-to-lane crossings (TLCs), the PSO-BP neural network model is trained using real vehicle lane change data and implemented when the TLC of the leading vehicle is longer than 1.0 s. In contrast, when the TLC is less than 1 s, the continuous recognition model of the TLC is used. By comparison with the BP neural network model, the recognition accuracy rate of the proposed model is increased from 80% to 87% after the PSO optimization for a time window of 1.0 s; these results meet the recognition requirements of the autonomous driving systems for distant targets. The findings of this paper improve the cognitive competence and safety of autonomous driving systems.https://ieeexplore.ieee.org/document/8744271/Autonomous driving perceptioncognitive competencelane change behaviorBP neural network
spellingShingle Chang Wang
Qinyu Sun
Zhen Li
Hongjia Zhang
Kaili Ruan
Cognitive Competence Improvement for Autonomous Vehicles: A Lane Change Identification Model for Distant Preceding Vehicles
IEEE Access
Autonomous driving perception
cognitive competence
lane change behavior
BP neural network
title Cognitive Competence Improvement for Autonomous Vehicles: A Lane Change Identification Model for Distant Preceding Vehicles
title_full Cognitive Competence Improvement for Autonomous Vehicles: A Lane Change Identification Model for Distant Preceding Vehicles
title_fullStr Cognitive Competence Improvement for Autonomous Vehicles: A Lane Change Identification Model for Distant Preceding Vehicles
title_full_unstemmed Cognitive Competence Improvement for Autonomous Vehicles: A Lane Change Identification Model for Distant Preceding Vehicles
title_short Cognitive Competence Improvement for Autonomous Vehicles: A Lane Change Identification Model for Distant Preceding Vehicles
title_sort cognitive competence improvement for autonomous vehicles a lane change identification model for distant preceding vehicles
topic Autonomous driving perception
cognitive competence
lane change behavior
BP neural network
url https://ieeexplore.ieee.org/document/8744271/
work_keys_str_mv AT changwang cognitivecompetenceimprovementforautonomousvehiclesalanechangeidentificationmodelfordistantprecedingvehicles
AT qinyusun cognitivecompetenceimprovementforautonomousvehiclesalanechangeidentificationmodelfordistantprecedingvehicles
AT zhenli cognitivecompetenceimprovementforautonomousvehiclesalanechangeidentificationmodelfordistantprecedingvehicles
AT hongjiazhang cognitivecompetenceimprovementforautonomousvehiclesalanechangeidentificationmodelfordistantprecedingvehicles
AT kailiruan cognitivecompetenceimprovementforautonomousvehiclesalanechangeidentificationmodelfordistantprecedingvehicles