DocumentCode
1190737
Title
Interactive Road Situation Analysis for Driver Assistance and Safety Warning Systems: Framework and Algorithms
Author
Cheng, Hong ; Zheng, Nanning ; Zhang, Xuetao ; Qin, Junjie ; Van de Wetering, Huub
Author_Institution
Inst. of Artificial Intelligence & Robotics, Xi´´an Jiaotong Univ.
Volume
8
Issue
1
fYear
2007
fDate
3/1/2007 12:00:00 AM
Firstpage
157
Lastpage
167
Abstract
Road situation analysis in Interactive Intelligent Driver-Assistance and Safety Warning (I2DASW) systems involves estimation and prediction of the position and size of various on-road obstacles. Real-time processing, given incomplete and uncertain information, is a challenge for current object detection and tracking technologies. This paper proposed a development framework and novel algorithms for road situation analysis based on driving action behavior, where the safety situation is analyzed by simulating real driving action behaviors. First, we review recent development and trends in road situation analysis to provide perspective for the related research. Second, we introduce a road situation analysis framework, where onboard sensors provide information about drivers, traffic environment, and vehicles. Finally, on the basis of the previous frameworks, we proposed multiple-obstacle detection and tracking algorithms using multiple sensors including radar, lidar, and a camera, where a decentralized track-to-track fusion approach is introduced to fuse these sensors. In order to reduce the effect of obstacle shape and appearance, we cluster lidar data and then classify obstacles into two categories: static and moving objects. Future collisions are assessed by computation of local tracks of moving obstacles using extended Kalman filter, maximum likelihood estimation to fuse distributed local tracks into global tracks, and finally, computation of future collision distribution from the global tracks. Our experimental results show that our approach is efficient for road situation evaluation and prediction
Keywords
Kalman filters; alarm systems; automated highways; driver information systems; maximum likelihood estimation; nonlinear filters; object detection; optical radar; road safety; road vehicle radar; cluster lidar data; decentralized track-to-track fusion; extended Kalman filter; interactive intelligent driver assistance; interactive road situation analysis; maximum likelihood estimation; object detection; object tracking; on-road obstacles; safety warning systems; Alarm systems; Algorithm design and analysis; Distributed computing; Fuses; Laser radar; Object detection; Radar tracking; Road accidents; Road safety; Sensor fusion; Driver assistance systems; environment modeling; object detection and tracking; sensor fusion; situation assessment;
fLanguage
English
Journal_Title
Intelligent Transportation Systems, IEEE Transactions on
Publisher
ieee
ISSN
1524-9050
Type
jour
DOI
10.1109/TITS.2006.890073
Filename
4114334
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