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      A Practical Approach for High Precision Reconstruction of a Motorcycle Trajectory Using a Low-Cost Multi-Sensor System

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          Abstract

          Motorcycle drivers are considered among the most vulnerable road users, as attested by the number of crashes increasing every year. The significant part of the fatalities relates to “single vehicle” loss of control in bends. During this investigation, a system based on an instrumented multi-sensor platform and an algorithmic study was developed to accurately reconstruct motorcycle trajectories achieved when negotiating bends. This system is used by the French Gendarmerie in order to objectively evaluate and to examine the way riders take their bends in order to better train riders to adopt a safe trajectory and to improve road safety. Data required for the reconstruction are acquired using a motorcycle that has been fully instrumented (in VIROLO++ Project) with several redundant sensors (reference sensors and low-cost sensors) which measure the rider actions (roll, steering) and the motorcycle behavior (position, velocity, acceleration, odometry, heading, and attitude). The proposed solution allowed the reconstruction of motorcycle trajectories in bends with a high accuracy (equal to that of fixed point positioning). The developed algorithm will be used by the French Gendarmerie in order to objectively evaluate and examine the way riders negotiate bends. It will also be used for initial training and retraining in order to better train riders to learn and estimate a safe trajectory and to increase the safety, efficiency and comfort of motorcycle riders.

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          Most cited references21

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          Real-Time Single-Frequency GPS/MEMS-IMU Attitude Determination of Lightweight UAVs

          In this paper, a newly-developed direct georeferencing system for the guidance, navigation and control of lightweight unmanned aerial vehicles (UAVs), having a weight limit of 5 kg and a size limit of 1.5 m, and for UAV-based surveying and remote sensing applications is presented. The system is intended to provide highly accurate positions and attitudes (better than 5 cm and 0.5 ∘ ) in real time, using lightweight components. The main focus of this paper is on the attitude determination with the system. This attitude determination is based on an onboard single-frequency GPS baseline, MEMS (micro-electro-mechanical systems) inertial sensor readings, magnetic field observations and a 3D position measurement. All of this information is integrated in a sixteen-state error space Kalman filter. Special attention in the algorithm development is paid to the carrier phase ambiguity resolution of the single-frequency GPS baseline observations. We aim at a reliable and instantaneous ambiguity resolution, since the system is used in urban areas, where frequent losses of the GPS signal lock occur and the GPS measurement conditions are challenging. Flight tests and a comparison to a navigation-grade inertial navigation system illustrate the performance of the developed system in dynamic situations. Evaluations show that the accuracies of the system are 0.05 ∘ for the roll and the pitch angle and 0.2 ∘ for the yaw angle. The ambiguities of the single-frequency GPS baseline can be resolved instantaneously in more than 90% of the cases.
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            Low-Cost MEMS Sensors and Vision System for Motion and Position Estimation of a Scooter

            The possibility to identify with significant accuracy the position of a vehicle in a mapping reference frame for driving directions and best-route analysis is a topic which is attracting a lot of interest from the research and development sector. To reach the objective of accurate vehicle positioning and integrate response events, it is necessary to estimate position, orientation and velocity of the system with high measurement rates. In this work we test a system which uses low-cost sensors, based on Micro Electro-Mechanical Systems (MEMS) technology, coupled with information derived from a video camera placed on a two-wheel motor vehicle (scooter). In comparison to a four-wheel vehicle; the dynamics of a two-wheel vehicle feature a higher level of complexity given that more degrees of freedom must be taken into account. For example a motorcycle can twist sideways; thus generating a roll angle. A slight pitch angle has to be considered as well; since wheel suspensions have a higher degree of motion compared to four-wheel motor vehicles. In this paper we present a method for the accurate reconstruction of the trajectory of a “Vespa” scooter; which can be used as alternative to the “classical” approach based on GPS/INS sensor integration. Position and orientation of the scooter are obtained by integrating MEMS-based orientation sensor data with digital images through a cascade of a Kalman filter and a Bayesian particle filter.
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              Estimation of IMU and MARG orientation using a gradient descent algorithm

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                Author and article information

                Journal
                Sensors (Basel)
                Sensors (Basel)
                sensors
                Sensors (Basel, Switzerland)
                MDPI
                1424-8220
                14 July 2018
                July 2018
                : 18
                : 7
                : 2282
                Affiliations
                [1 ]SATIE Laboratory, University Paris Sud, 91405 Orsay, France; rabah.sadoun@ 123456g.enp.edu.dz (R.S.); abdelhafid.elouardi@ 123456u-psud.fr (A.E.); Bruno.larnaudie@ 123456u-psud.fr (B.L.); samir.bouaziz@ 123456u-psud.fr (S.B.); abderrahmane.boubezoul@ 123456ifsttar.fr (A.B.); bastien.vincke@ 123456u-psud.fr (B.V.); stephane.espie@ 123456ifsttar.fr (S.E.)
                [2 ]Signal and Communication Laboratory, National Polytechnic School, 16200 El-Harrach, Algiers, Algeria
                [3 ]IFSTTAR, Champs-sur-Marne, F-77447 Marne la Vallée, France
                Author notes
                [* ]Correspondence: sarra.smaiah@ 123456u-psud.fr ; Tel.: +33-78-388-3572
                Author information
                https://orcid.org/0000-0003-3967-1242
                Article
                sensors-18-02282
                10.3390/s18072282
                6069380
                30011924
                e4f1b446-d491-48c0-bad0-60befbd0cd15
                © 2018 by the authors.

                Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license ( http://creativecommons.org/licenses/by/4.0/).

                History
                : 04 June 2018
                : 09 July 2018
                Categories
                Article

                Biomedical engineering
                trajectory reconstruction,low-cost sensors,embedded systems,powered two wheels (ptw),safe trajectory,data fusion

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