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Estimation of the closest in-path vehicle by low-channel lidar and camera sensor fusion for autonomous vehicles

Title
Estimation of the closest in-path vehicle by low-channel lidar and camera sensor fusion for autonomous vehicles
Author(s)
Bae, HyunjinLee, GuYang, JaeseungShin, GwanjunChoi, GyeunghoLim, Yongseob
Issued Date
2021-05
Citation
Sensors, v.21, no.9
Type
Article
Author Keywords
Autonomous emergency braking (AEB) testBird’s eye-view (BEV)Closest in-path vehicle (CIPV)Sensor fusionAlignment of point clouds to images
Keywords
Braking performanceAutonomous drivingCamerasManeuverabilityOptical radarCamera sensorCognitive performanceDriving performanceOverall stabilitiesTest protocolsSpeed controlAdaptive cruise control (ACC)Various functionsAutonomous vehiclesAdaptive cruise controlAutomobile driversAutomobile testing
ISSN
1424-8220
Abstract
In autonomous driving, using a variety of sensors to recognize preceding vehicles at middle and long distances is helpful for improving driving performance and developing various functions. However, if only LiDAR or cameras are used in the recognition stage, it is difficult to obtain the necessary data due to the limitations of each sensor. In this paper, we proposed a method of converting the vision-tracked data into bird’s eye-view (BEV) coordinates using an equation that projects LiDAR points onto an image and a method of fusion between LiDAR and vision-tracked data. Thus, the proposed method was effective through the results of detecting the closest in-path vehicle (CIPV) in various situations. In addition, even when experimenting with the EuroNCAP autonomous emergency braking (AEB) test protocol using the result of fusion, AEB performance was improved through improved cognitive performance than when using only LiDAR. In the experimental results, the performance of the proposed method was proven through actual vehicle tests in various scenarios. Consequently, it was convincing that the proposed sensor fusion method significantly improved the adaptive cruise control (ACC) function in autonomous maneuvering. We expect that this improvement in perception performance will contribute to improving the overall stability of ACC. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.
URI
http://hdl.handle.net/20.500.11750/15422
DOI
10.3390/s21093124
Publisher
MDPI
Related Researcher
  • 최경호 Choi, Gyeungho
  • Research Interests ADAS; Automated Driving System; Clean Gas Energy Technology; Air Pollution Control Technology
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Appears in Collections:
Interdisciplinary Engineering Major Advanced Intelligent Mobility Research Group 1. Journal Articles
Department of Robotics and Mechatronics Engineering Autonomous Systems and Control Lab 1. Journal Articles

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