DocumentCode :
3603791
Title :
Precise Localization of an Autonomous Car Based on Probabilistic Noise Models of Road Surface Marker Features Using Multiple Cameras
Author :
Kichun Jo ; Yongwoo Jo ; Jae Kyu Suhr ; Ho Gi Jung ; Myoungho Sunwoo
Author_Institution :
Dept. of Automotive Eng., Hanyang Univ., Seoul, South Korea
Volume :
16
Issue :
6
fYear :
2015
Firstpage :
3377
Lastpage :
3392
Abstract :
This paper presents a Monte Carlo localization algorithm for an autonomous car based on an integration of multiple sensors data. The sensor system is composed of onboard motion sensors, a low-cost GPS receiver, a precise digital map, and multiple cameras. Data from the onboard motion sensors, such as yaw rate and wheel speeds, are used to predict the vehicle motion, and the GPS receiver is applied to establish the validation boundary of the ego-vehicle position. The digital map contains location information at the centimeter level about road surface markers (RSMs), such as lane markers, stop lines, and traffic sign markers. The multiple images from the front and rear mono-cameras and the around-view monitoring system are used to detect the RSM features. The localization algorithm updates the measurements by matching the RSM features from the cameras to the digital map based on a particle filter. Because the particle filter updates the measurements based on a probabilistic sensor model, the exact probabilistic modeling of sensor noise is a key factor to enhance the localization performance. To design the probabilistic noise model of the RSM features more explicitly, we analyze the results of the RSM feature detection for various real driving conditions. The proposed localization algorithm is verified and evaluated through experiments under various test scenarios and configurations. From the experimental results, we conclude that the presented localization algorithm based on the probabilistic noise model of RSM features provides sufficient accuracy and reliability for autonomous driving system applications.
Keywords :
Monte Carlo methods; cameras; cartography; feature extraction; image matching; image motion analysis; object detection; road traffic; traffic engineering computing; Global Positioning System; Monte Carlo localization algorithm; RSM feature detection; autonomous car localization; cameras; digital map; feature matching; lane markers; localization algorithm; low-cost GPS receiver; onboard motion sensors; probabilistic noise models; probabilistic sensor model; road surface marker features; stop lines; traffic sign markers; vehicle motion prediction; Autonomous automobiles; Cameras; Feature extraction; Monte Carlo methods; Noise; Particle filters; Probabilistic logic; Sensor systems; Precise localization; autonomous car; autonomous driving; multiple cameras; particle filtering; probabilistic noise model of road surface marker (RSM) features; probabilistic noise modeling; road surface marker;
fLanguage :
English
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
1524-9050
Type :
jour
DOI :
10.1109/TITS.2015.2450738
Filename :
7160754
Link To Document :
بازگشت