Speed perception is an important task depending mainly on optic flow that the driver must perform continuously to control his/her vehicle. Unfortunately, it appears that in some driving simulators speed perception is under estimated, leading into speed production higher than in real conditions. Perceptual validity is then not good enough to study driver’s behavior. To solve this problem, a technique has recently seen the light, which consists of modifying the geometric field of view (GFOV) while keeping the real field of view (FOV) constant. We define our visual scale factor as the ratio between the GFOV and the FOV. The present study has been carried out on the SAAM dynamic driving simulator and aims at determining the precise effect of this visual scale factor on the speed perception. Twenty subjects have reproduced two speeds (50 and 90 km/h) without knowing the numerical values of these consigns, with five different visual scale factors: 0.70, 0.85, 1.00, 1.15, and 1.30. We show that speed perception significantly increases when the visual factor increases. A 0.15 modification of this factor is enough to obtain a significant effect. Furthermore, the relative variation of the speed perception is proportional to the visual scale factor. Besides, the modification of the geometric field of view remained unnoticed by all the subjects, which implies that this technique can be easily used to make drivers to reduce their speed in driving simulation conditions. However, this technique may also modify perception of distances.
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e-mail: florent.colombet@gmail.com
e-mail: paillot@cluny.ensam.fr
e-mail: merienne@cluny.ensam.fr
e-mail: andras.kemeny@renault.com
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December 2011
Research Papers
Visual Scale Factor for Speed Perception
Florent Colombet,
e-mail: florent.colombet@gmail.com
Florent Colombet
Arts et Métiers ParisTech
, Le2i, CNRS, Institut Image, Rue Thomas Dumorey, 71100 Chalon sur Saône, France
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Damien Paillot,
e-mail: paillot@cluny.ensam.fr
Damien Paillot
Arts et Métiers ParisTech
, Le2i, CNRS, Institut Image, Rue Thomas Dumorey, 71100 Chalon sur Saône, France
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Frédéric Mérienne,
e-mail: merienne@cluny.ensam.fr
Frédéric Mérienne
Arts et Métiers ParisTech
, Le2i, CNRS, Institut Image, Rue Thomas Dumorey, 71100 Chalon sur Saône, France
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Andras Kemeny
Andras Kemeny
RENAULT, Technical Centre for Simulation, Avenue du Golf, 78288 Guyancourt, France; Arts et Métiers ParisTech Le2i, CNRS,
e-mail: andras.kemeny@renault.com
Institut Image
, Rue Thomas Dumorey, 71100 Chalon sur Saône, France
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Florent Colombet
Arts et Métiers ParisTech
, Le2i, CNRS, Institut Image, Rue Thomas Dumorey, 71100 Chalon sur Saône, France
e-mail: florent.colombet@gmail.com
Damien Paillot
Arts et Métiers ParisTech
, Le2i, CNRS, Institut Image, Rue Thomas Dumorey, 71100 Chalon sur Saône, France
e-mail: paillot@cluny.ensam.fr
Frédéric Mérienne
Arts et Métiers ParisTech
, Le2i, CNRS, Institut Image, Rue Thomas Dumorey, 71100 Chalon sur Saône, France
e-mail: merienne@cluny.ensam.fr
Andras Kemeny
RENAULT, Technical Centre for Simulation, Avenue du Golf, 78288 Guyancourt, France; Arts et Métiers ParisTech Le2i, CNRS,
Institut Image
, Rue Thomas Dumorey, 71100 Chalon sur Saône, France
e-mail: andras.kemeny@renault.com
J. Comput. Inf. Sci. Eng. Dec 2011, 11(4): 041010 (6 pages)
Published Online: December 6, 2011
Article history
Received:
October 11, 2011
Revised:
November 7, 2011
Online:
December 6, 2011
Published:
December 6, 2011
Citation
Colombet, F., Paillot, D., Mérienne, F., and Kemeny, A. (December 6, 2011). "Visual Scale Factor for Speed Perception." ASME. J. Comput. Inf. Sci. Eng. December 2011; 11(4): 041010. https://doi.org/10.1115/1.4005449
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