A sigma-point Kalman filter is derived for integrating GPS measurements with inertial measurements from gyros and accelerometers to determine both the position and the atti-tude of a moving vehicle. Sigma-point filters use a carefully selected set of sample points to more accurately map the probability distribution than the linearization of the standard extended Kalman filter, leading to faster convergence from inaccurate initial conditions in position/attitude estimation problems. The filter formulation is based on standard inertial navigation equations. The global attitude parameterization is given by a quaternion, while a generalized three-dimensional attitude representation is used to define the local attitude error. A multiplicative qu...
This paper presents an implementation of the EKF (extended Kalman filtering) estimator for spacecraf...
In order to efficiently control an unmanned vehicle, knowledge about the position, velocity and atti...
180 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P LSGI 2017 YangCOne of the k...
Extended Kalman filters have long been applied to sen-sor fusion in navigation tasks. They can be us...
The extended Kalman filter (EKF) is widely used for the integration of measurements form the Global ...
The integrations of a global positioning system (GPS) and an inertial navigation system (INS) usuall...
Visual Odometry (VO) is the process of estimating the motion of a system using single or stereo came...
Herein, the purpose is to present a Kalman filter based on the sigma point unscented transformation ...
This paper presents a nonlinear numerical observer for accurate position, velocity and attitude (PVA...
AbstractThis work presents a practical method for estimating the full kinematic state of a vehicle, ...
In 1960, R.E. Kalman published his papers on a recursive predictive filter that is based on the use ...
This paper demonstrates a method of estimating several key vehicle states – sideslip angle, longitud...
This work presents a practical method for estimating the full kinematic state of a vehicle, along wi...
Kalman filtering is a well-established method for fusing sensor data in order to accuratelyestimate ...
This research investigates the performance of non-linear estimation filtering for GPS-PPP/MEMS-based...
This paper presents an implementation of the EKF (extended Kalman filtering) estimator for spacecraf...
In order to efficiently control an unmanned vehicle, knowledge about the position, velocity and atti...
180 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P LSGI 2017 YangCOne of the k...
Extended Kalman filters have long been applied to sen-sor fusion in navigation tasks. They can be us...
The extended Kalman filter (EKF) is widely used for the integration of measurements form the Global ...
The integrations of a global positioning system (GPS) and an inertial navigation system (INS) usuall...
Visual Odometry (VO) is the process of estimating the motion of a system using single or stereo came...
Herein, the purpose is to present a Kalman filter based on the sigma point unscented transformation ...
This paper presents a nonlinear numerical observer for accurate position, velocity and attitude (PVA...
AbstractThis work presents a practical method for estimating the full kinematic state of a vehicle, ...
In 1960, R.E. Kalman published his papers on a recursive predictive filter that is based on the use ...
This paper demonstrates a method of estimating several key vehicle states – sideslip angle, longitud...
This work presents a practical method for estimating the full kinematic state of a vehicle, along wi...
Kalman filtering is a well-established method for fusing sensor data in order to accuratelyestimate ...
This research investigates the performance of non-linear estimation filtering for GPS-PPP/MEMS-based...
This paper presents an implementation of the EKF (extended Kalman filtering) estimator for spacecraf...
In order to efficiently control an unmanned vehicle, knowledge about the position, velocity and atti...
180 pages : color illustrationsPolyU Library Call No.: [THS] LG51 .H577P LSGI 2017 YangCOne of the k...