Context-based pedestrian path prediction

Conference Paper (2014)
Author(s)

Julian Francisco Pieter Kooij (Environment Perception, Daimler R and D, Universiteit van Amsterdam)

Nicolas Schneider (Environment Perception, Daimler R and D, Universiteit van Amsterdam)

Fabian Flohr (Environment Perception, Daimler R and D, Universiteit van Amsterdam)

Dariu M. Gavrila (Environment Perception, Daimler R and D, Universiteit van Amsterdam)

Affiliation
External organisation
DOI related publication
https://doi.org/10.1007/978-3-319-10599-4_40
More Info
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Publication Year
2014
Language
English
Affiliation
External organisation
Volume number
8694 LNCS
Pages (from-to)
618-633
Publisher
Springer
ISBN (print)
9783319105987

Abstract

We present a novel Dynamic Bayesian Network for pedestrian path prediction in the intelligent vehicle domain. The model incorporates the pedestrian situational awareness, situation criticality and spatial layout of the environment as latent states on top of a Switching Linear Dynamical System (SLDS) to anticipate changes in the pedestrian dynamics. Using computer vision, situational awareness is assessed by the pedestrian head orientation, situation criticality by the distance between vehicle and pedestrian at the expected point of closest approach, and spatial layout by the distance of the pedestrian to the curbside. Our particular scenario is that of a crossing pedestrian, who might stop or continue walking at the curb. In experiments using stereo vision data obtained from a vehicle, we demonstrate that the proposed approach results in more accurate path prediction than only SLDS, at the relevant short time horizon (1 s), and slightly outperforms a computationally more demanding state-of-the-art method.

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