Title :
Robust driver heartbeat estimation: A q-Hurst exponent based automatic sensor change with interactive multi-model EKF
Author_Institution :
IMRA Europe SAS, German Research Office, 80807 Munich, Germany
Abstract :
Preventing car accidents by monitoring the driver´s physiological parameters is of high importance. However, existing measurement methods are not robust to driver´s body movements. In this paper, a system that estimates the heartbeat from the seat embedded piezoelectric sensors, and that is robust to strong body movements is presented. Multifractal q-Hurst exponents are used within a classifier to predict the most probable best sensor signal to be used in an Interactive Multi-Model Extended Kalman Filter pulsation estimation procedure. The car vibration noise is reduced using an autoregressive exogenous model to predict the noise on sensors. The performance of the proposed system was evaluated on real driving data up to 100 km/h and with slaloms at high speed. It is shown that this method improves by 36.7% the pulsation estimation under strong body movement compared to static sensor pulsation estimation and appears to provide reliable pulsation variability information for top-level analysis of drowsiness or other conditions.
Keywords :
"Vehicles","Heart beat","Heart rate variability","Fractals","Vibrations","Estimation error"
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2015 37th Annual International Conference of the IEEE
Electronic_ISBN :
1558-4615
DOI :
10.1109/EMBC.2015.7318964