Title
Multi-sensor data fusion for autonomous vehicle navigation through adaptive particle filter.
Abstract
In urban environment, we need accurate and precise estimation of vehicle state for real time navigation and control. This paper presents an architecture to fuse different data from onboard sensors to estimate the vehicle state when observations are noisy. We are trying to compensate the GPS errors by data fusion from different sensors in a probabilistic way. A particle filter with joint observation model has been proposed to real timely estimate the vehicle state. An adaptive joint observation model has been developed to fuse different observations according to accuracy and reliability of the corresponding sensor. Finally a navigation architecture has been proposed for fully autonomous driving with dynamic obstacles. Experiments with real vehicle show the proposed method is able to estimate the vehicle state precisely when the individual observations fail to be enough accurate.
Year
DOI
Venue
2010
10.1109/IVS.2010.5548052
Intelligent Vehicles Symposium
Keywords
Field
DocType
adaptive filters,mobile robots,particle filtering (numerical methods),path planning,road vehicles,sensor fusion,state estimation,GPS errors,adaptive particle filter,autonomous vehicle navigation,dynamic obstacles,joint observation model,multisensor data fusion,onboard sensors,probability,real time navigation,urban environment,vehicle state estimation
Motion planning,Computer vision,Particle filter,Sensor fusion,Adaptive filter,Artificial intelligence,Global Positioning System,Probabilistic logic,Engineering,Fuse (electrical),Mobile robot
Conference
ISSN
Citations 
PageRank 
1931-0587
1
0.35
References 
Authors
0
3
Name
Order
Citations
PageRank
Hossein Tehrani Niknejad11127.29
Seiichi Mita231638.88
Long Han3616.96