Title
Estimation of vehicle pose and road curvature based on Perception-Net
Abstract
Proposed is an algorithm to estimate vehicle pose and road curvature by geometrically fusing sensor data from camera image, velocity meter, and steering wheel encoder. To achieve computational efficiency in processing in a real time sequence, we propose a method to model the lane on the road as a series of connected rectangular plates. We propose an algorithm, the so called “Perception-Net”, where not only variables denoting the vehicle pose and the road curvature, but also the corresponding uncertainties are propagated in forward and backward directions in such a way to satisfy the given constraint condition, maintain consistency, reduce the uncertainties, and guarantee robustness. An experimental result is also presented
Year
DOI
Venue
1999
10.1109/ROBOT.1999.770396
ICRA
Keywords
Field
DocType
robustness,road curvature,road vehicles,perception-net,steering wheel encoder,parameter estimation,nonlinear programming,computational efficiency,real time sequence,velocity meter,camera image,constraint theory,knowledge representation,vehicle pose,uncertainty handling,sensor fusion,control systems,satisfiability,image sensors,uncertainty,real time
Control theory,Nonlinear programming,Robustness (computer science),Control engineering,Artificial intelligence,Estimation theory,Computer vision,Knowledge representation and reasoning,Curvature,Steering wheel,Sensor fusion,Encoder,Engineering
Conference
Volume
ISSN
ISBN
3
1050-4729
0-7803-5180-0
Citations 
PageRank 
References 
3
0.93
1
Authors
7
Name
Order
Citations
PageRank
Sukhan Lee11160280.42
Jae-Won Lee2154.60
Dongmok Shin331.27
Woong Kwon44311.09
Dong Yoon Kim5390159.88
Kyoung-sig Roh6184.72
Kwang S. Boo731.27