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 positionin...

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Main Authors: Antonio Vettore, Francesco Pirotti, Alberto Guarnieri
Format: Article
Language:English
Published: MDPI AG 2013-01-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/13/2/1510
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spelling doaj-de1d6b76e1ca455a816d5c9997f2da712020-11-24T23:30:08ZengMDPI AGSensors1424-82202013-01-011321510152210.3390/s130201510Low-Cost MEMS Sensors and Vision System for Motion and Position Estimation of a ScooterAntonio VettoreFrancesco PirottiAlberto GuarnieriThe 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.http://www.mdpi.com/1424-8220/13/2/1510Bayesian particle filterKalman filterMEMSWhippel modelmotorcycle
collection DOAJ
language English
format Article
sources DOAJ
author Antonio Vettore
Francesco Pirotti
Alberto Guarnieri
spellingShingle Antonio Vettore
Francesco Pirotti
Alberto Guarnieri
Low-Cost MEMS Sensors and Vision System for Motion and Position Estimation of a Scooter
Sensors
Bayesian particle filter
Kalman filter
MEMS
Whippel model
motorcycle
author_facet Antonio Vettore
Francesco Pirotti
Alberto Guarnieri
author_sort Antonio Vettore
title Low-Cost MEMS Sensors and Vision System for Motion and Position Estimation of a Scooter
title_short Low-Cost MEMS Sensors and Vision System for Motion and Position Estimation of a Scooter
title_full Low-Cost MEMS Sensors and Vision System for Motion and Position Estimation of a Scooter
title_fullStr Low-Cost MEMS Sensors and Vision System for Motion and Position Estimation of a Scooter
title_full_unstemmed Low-Cost MEMS Sensors and Vision System for Motion and Position Estimation of a Scooter
title_sort low-cost mems sensors and vision system for motion and position estimation of a scooter
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2013-01-01
description 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.
topic Bayesian particle filter
Kalman filter
MEMS
Whippel model
motorcycle
url http://www.mdpi.com/1424-8220/13/2/1510
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AT francescopirotti lowcostmemssensorsandvisionsystemformotionandpositionestimationofascooter
AT albertoguarnieri lowcostmemssensorsandvisionsystemformotionandpositionestimationofascooter
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