Mourad Benoussaad
University of Montpellier
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Publication
Featured researches published by Mourad Benoussaad.
Sensors | 2015
Mourad Benoussaad; Benoît Sijobert; Katja D. Mombaur; Christine Azevedo Coste
This paper introduces a method for the robust estimation of foot clearance during walking, using a single inertial measurement unit (IMU) placed on the subject’s foot. The proposed solution is based on double integration and drift cancellation of foot acceleration signals. The method is insensitive to misalignment of IMU axes with respect to foot axes. Details are provided regarding calibration and signal processing procedures. Experimental validation was performed on 10 healthy subjects under three walking conditions: normal, fast and with obstacles. Foot clearance estimation results were compared to measurements from an optical motion capture system. The mean error between them is significantly less than 15% under the various walking conditions.
Medical & Biological Engineering & Computing | 2013
Mourad Benoussaad; Philippe Poignet; Mitsuhiro Hayashibe; Christine Azevedo-Coste; Charles Fattal; David Guiraud
We investigated the parameter identification of a multi-scale physiological model of skeletal muscle, based on Huxley’s formulation. We focused particularly on the knee joint controlled by quadriceps muscles under electrical stimulation (ES) in subjects with a complete spinal cord injury. A noninvasive and in vivo identification protocol was thus applied through surface stimulation in nine subjects and through neural stimulation in one ES-implanted subject. The identification protocol included initial identification steps, which are adaptations of existing identification techniques to estimate most of the parameters of our model. Then we applied an original and safer identification protocol in dynamic conditions, which required resolution of a nonlinear programming (NLP) problem to identify the serial element stiffness of quadriceps. Each identification step and cross validation of the estimated model in dynamic condition were evaluated through a quadratic error criterion. The results highlighted good accuracy, the efficiency of the identification protocol and the ability of the estimated model to predict the subject-specific behavior of the musculoskeletal system. From the comparison of parameter values between subjects, we discussed and explored the inter-subject variability of parameters in order to select parameters that have to be identified in each patient.
Journal of Neuroengineering and Rehabilitation | 2016
Zhan Li; David Guiraud; David Andreu; Mourad Benoussaad; Charles Fattal; Mitsuhiro Hayashibe
BackgroundFunctional electrical stimulation (FES) is a neuroprosthetic technique for restoring lost motor function of spinal cord injured (SCI) patients and motor-impaired subjects by delivering short electrical pulses to their paralyzed muscles or motor nerves. FES induces action potentials respectively on muscles or nerves so that muscle activity can be characterized by the synchronous recruitment of motor units with its compound electromyography (EMG) signal is called M-wave. The recorded evoked EMG (eEMG) can be employed to predict the resultant joint torque, and modeling of FES-induced joint torque based on eEMG is an essential step to provide necessary prediction of the expected muscle response before achieving accurate joint torque control by FES.MethodsPrevious works on FES-induced torque tracking issues were mainly based on offline analysis. However, toward personalized clinical rehabilitation applications, real-time FES systems are essentially required considering the subject-specific muscle responses against electrical stimulation. This paper proposes a wireless portable stimulator used for estimating/predicting joint torque based on real time processing of eEMG. Kalman filter and recurrent neural network (RNN) are embedded into the real-time FES system for identification and estimation.ResultsPrediction results on 3 able-bodied subjects and 3 SCI patients demonstrate promising performances. As estimators, both Kalman filter and RNN approaches show clinically feasible results on estimation/prediction of joint torque with eEMG signals only, moreover RNN requires less computational requirement.ConclusionThe proposed real-time FES system establishes a platform for estimating and assessing the mechanical output, the electromyographic recordings and associated models. It will contribute to open a new modality for personalized portable neuroprosthetic control toward consolidated personal healthcare for motor-impaired patients.
Journal of Neuroengineering and Rehabilitation | 2014
David Guiraud; Christine Azevedo Coste; Mourad Benoussaad; Charles Fattal
Health | 2015
Benoît Sijobert; Mourad Benoussaad; Jennifer Denys; Roger Pissard-Gibollet; Christian Geny; Christine Azevedo Coste
ISEK'10: The XVIII Congress of the International Society of Electrophysiology and Kinesiology | 2010
Jovana Jovic; Christine Azevedo Coste; Philippe Fraisse; Mourad Benoussaad; Charles Fattal
IFESS: International Functional Electrical Stimulation Society | 2007
Mourad Benoussaad; Philippe Poignet; David Guiraud
Medical & Biological Engineering & Computing | 2015
Mourad Benoussaad; Philippe Poignet; Mitsuhiro Hayashibe; Christine Azevedo-Coste; Charles Fattal; David Guiraud
Archive | 2015
Mourad Benoussaad; Jennifer Denys; Roger Pissard-Gibollet; Christian Geny; Christine Azevedo Coste
The Proceedings of JSME annual Conference on Robotics and Mechatronics (Robomec) | 2011
Mourad Benoussaad; Philippe Poignet; David Guiraud; Yoshihiko Nakamura