TY - GEN
T1 - Motion tracking algorithms for inertial measurement
AU - Torres, Javier
AU - O'Flynn, Brendan
AU - Angove, Philip
AU - Murphy, Frank
AU - Mathuna, Cian O.
N1 - Publisher Copyright:
Copyright © 2007 ICST.
PY - 2007
Y1 - 2007
N2 - In this paper, we describe the development of the software algorithms required to interpret sensor data developed by a wearable miniaturized wireless inertial measurement unit (IMU) to enable tracking of movement Traditionally, inertial tracking has involved the use of off the shelf motion sensors in the form of an inertial measurement unit, in combination with a GPS based receiver system for improved accuracy. Several immediate concerns are evident when a low cost, low power consumption, miniaturised solution is needed in applications such as animal tracking. GPS solutions have proven to be costly requiring an expensive satellite link & entail power supply and size concerns when deployed on live animals. In particular applications, GPS coverage is not available for all application scenarios and alternative mechanisms for motion tracking are required. IMUs cannot be used in isolation for absolute position tracking, since an IMU calculates position utilising a square function of time (t) where the error is proportional to the sampling time, any errors in the output of the sensors are therefore also multiplied by t2. This typically leads to large positional errors in operation: These issues can potentially be addressed by using only a low cost modular IMU solution to enable the mapping of movement if appropriate algorithms are implemented The goal of this paper is to present a mathematical algorithm that enables an inertial-based tracking system to be realized. This algorithm could then be used with GPS (GPS is commonly used but there are other methods like triangulation) along with a Kalman Filter algorithm providing an accurate 3-Dimensional tracking system.
AB - In this paper, we describe the development of the software algorithms required to interpret sensor data developed by a wearable miniaturized wireless inertial measurement unit (IMU) to enable tracking of movement Traditionally, inertial tracking has involved the use of off the shelf motion sensors in the form of an inertial measurement unit, in combination with a GPS based receiver system for improved accuracy. Several immediate concerns are evident when a low cost, low power consumption, miniaturised solution is needed in applications such as animal tracking. GPS solutions have proven to be costly requiring an expensive satellite link & entail power supply and size concerns when deployed on live animals. In particular applications, GPS coverage is not available for all application scenarios and alternative mechanisms for motion tracking are required. IMUs cannot be used in isolation for absolute position tracking, since an IMU calculates position utilising a square function of time (t) where the error is proportional to the sampling time, any errors in the output of the sensors are therefore also multiplied by t2. This typically leads to large positional errors in operation: These issues can potentially be addressed by using only a low cost modular IMU solution to enable the mapping of movement if appropriate algorithms are implemented The goal of this paper is to present a mathematical algorithm that enables an inertial-based tracking system to be realized. This algorithm could then be used with GPS (GPS is commonly used but there are other methods like triangulation) along with a Kalman Filter algorithm providing an accurate 3-Dimensional tracking system.
KW - Algorithms
KW - Motion Tracking
KW - Wireless Inertial Measurement Unit (WIMU). Kalman Filter
UR - https://www.scopus.com/pages/publications/84907897108
U2 - 10.4108/bodynets.2007.170
DO - 10.4108/bodynets.2007.170
M3 - Conference proceeding
AN - SCOPUS:84907897108
T3 - BODYNETS 2007 - 2nd International ICST Conference on Body Area Networks
BT - BODYNETS 2007 - 2nd International ICST Conference on Body Area Networks
A2 - Fantacci, Romano
PB - ICST
T2 - ICST 2nd International Conference on Body Area Networks, BodyNets 2007
Y2 - 11 June 2007 through 13 June 2007
ER -