DocumentCode
1758473
Title
General Behavior Prediction by a Combination of Scenario-Specific Models
Author
Bonnin, Sarah ; Weisswange, Thomas H. ; Kummert, Franz ; Schmuedderich, Jens
Author_Institution
Res. Inst. for Cognition & Robot., Bielefeld Univ., Bielefeld, Germany
Volume
15
Issue
4
fYear
2014
fDate
Aug. 2014
Firstpage
1478
Lastpage
1488
Abstract
Before taking a decision, a driver anticipates the future behavior of other traffic participants. However, if a driver is inattentive or overloaded, he may fail to consider relevant information. This can lead to bad decisions and potentially result in an accident. A computational system that is designed to anticipate other traffic participants´ behaviors could assist the driver in his decision making by sending him an early warning when a risk of collision is predicted. Existing research in this area usually focuses on only one of two aspects, i.e., quality or scope. Quality refers to the ability to warn a driver early before a dangerous situation happens. Scope is the diversity of scenarios in which the approach can work. In general, we see methods targeting a broad scope but showing low quality, with others having a narrow scope but high quality. Our goal is to create a system with high quality and high scope. To achieve this, we propose an architecture that combines classifiers to predict behaviors for many scenarios. In this paper, we will first introduce the generic concept of such a system applicable to highway and inner-city scenarios. We will show that a combination of general and specific classifiers is a solution to improve quality and scope based on a concrete implementation for lane-change prediction in highway scenarios.
Keywords
behavioural sciences computing; road traffic; traffic engineering computing; general behavior prediction; highway scenario; inner-city scenario; lane-change prediction; quality aspect; scenario-specific model; scope aspcet; traffic participant behavior; Computational modeling; Context; Context modeling; Predictive models; Roads; Vehicles; Behavior prediction; driver model; prediction methods; traffic modeling;
fLanguage
English
Journal_Title
Intelligent Transportation Systems, IEEE Transactions on
Publisher
ieee
ISSN
1524-9050
Type
jour
DOI
10.1109/TITS.2014.2299340
Filename
6733377
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