DocumentCode :
2756904
Title :
Discriminating sensors for driver´s impairment detection
Author :
Santana-diaz, Alfkedo ; Hernandez-Gress, Neil ; Esteve, Daniel ; Jammes, Bruno
Author_Institution :
Lab. d´´Autom. et d´´Anal. des Syst., CNRS, Toulouse, France
fYear :
2000
fDate :
2000
Firstpage :
578
Lastpage :
583
Abstract :
In this work, the authors present a statistical analysis applied to different sensors on the driver´s impairment detection problem. Their goal is to get a minimal number of discriminating sensors to match the requirements of an industrial prototype. The signals coming from these group of sensors are used to create artificial variables based on several mathematical transformations (wavelets, standard deviations) in order to fuse this information at a first level. The authors´ statistical study is based on several steps: 1) the observation of the variation of the mean and variance of the different variables, 2) the test of Hypothesis F concerning a population´s variance and then, an hypotheses test based on Student´s t distribution for the means, 3) principal components analysis (PCA); and 4) general performance of the diagnosis system using or not the different variables. This study has been performed using experimental data coming from 10 drivers in real experiments involving fatigued drivers at a closed circuit and over a motorway. These experiments have been realised using the CopiTech demonstrator which is equipped with a group of sensors measuring physiologic, mechanical and environmental status in real time. The analysis is validated by the physical state of the driver based on EEG. Results stress that the better discriminating sensors are: a) lateral position, b) steering wheel angle, and c) vehicle speed
Keywords :
biomedical transducers; electroencephalography; position measurement; principal component analysis; safety; sensors; statistical analysis; CopiTech demonstrator; active safety; artificial variables creation; discriminating sensors; driver´s impairment detection; environmental status; fatigued drivers; information fusing; mathematical transformations; population´s variance; Circuit testing; Driver circuits; Fuses; Mechanical sensors; Mechanical variables measurement; Principal component analysis; Prototypes; Sensor fusion; Statistical analysis; System testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Microtechnologies in Medicine and Biology, 1st Annual International, Conference On. 2000
Conference_Location :
Lyon
Print_ISBN :
0-7803-6603-4
Type :
conf
DOI :
10.1109/MMB.2000.893851
Filename :
893851
Link To Document :
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