In this report, we analyze the performance degradation due to three classes of model mismatch: parameter jumping, undermodeling and overmodeling, in estimating the particle motion by using the orthogonal polynomials to model the trajectory. We find that these model mismatches make the \u27optimal estimator\u27 to have large bias and mean squared error. For the case of undermodeling, the estimation error increases, in general, without a bound as the observation interval increases. We then propose the Finite Lifetime Alternately Triggered Multiple Model Filter (FLAT MMF), as a solution. FLAT MMF is a filter composed of a set of K identical conventional state estimation filters, each triggered alternately. After the last filter is triggered, t...
Particle filtering is being investigated extensively due to its important feature of target tracking...
The majority of deployed target tracking systems use some variant of the Kalman filter for their sta...
Twisted particle filters are a class of sequential Monte Carlo methods recently introduced by Whitel...
In this report, we analyze the performance degradation due to three classes of model mismatch: param...
The problem of modeling accuracy in target tracking has been well studied in the past and is special...
This line of research seeks to increase knowledge of a tracked target using the particle filter, als...
Abstract. Due to its great ability of conquering clutters, which is es-pecially useful for high-dime...
Kalman Filters (KF) is a recursive estimation algorithm, a special case of Bayesian estimators under...
For the issue of limited filtering accuracy of interactive multiple model particle filter algorithm ...
Manoeuvring target tracking faces the challenge caused by the target motion model uncertainty, i.e.,...
Three-dimensional tracking of multiple objects from multiple views has a wide range of applications,...
AbstractPath following is difficult when the observation rate is low. Multiple model estimators inco...
Marginalization enables the particle filter to be applied to high-dimensional problems by invoking t...
The extended Kalman filter (EKF) has been used as the standard technique for performing recursive no...
Multiple hypothesis trackers (MHTs) are widely accepted as the best means of tracking targets in clu...
Particle filtering is being investigated extensively due to its important feature of target tracking...
The majority of deployed target tracking systems use some variant of the Kalman filter for their sta...
Twisted particle filters are a class of sequential Monte Carlo methods recently introduced by Whitel...
In this report, we analyze the performance degradation due to three classes of model mismatch: param...
The problem of modeling accuracy in target tracking has been well studied in the past and is special...
This line of research seeks to increase knowledge of a tracked target using the particle filter, als...
Abstract. Due to its great ability of conquering clutters, which is es-pecially useful for high-dime...
Kalman Filters (KF) is a recursive estimation algorithm, a special case of Bayesian estimators under...
For the issue of limited filtering accuracy of interactive multiple model particle filter algorithm ...
Manoeuvring target tracking faces the challenge caused by the target motion model uncertainty, i.e.,...
Three-dimensional tracking of multiple objects from multiple views has a wide range of applications,...
AbstractPath following is difficult when the observation rate is low. Multiple model estimators inco...
Marginalization enables the particle filter to be applied to high-dimensional problems by invoking t...
The extended Kalman filter (EKF) has been used as the standard technique for performing recursive no...
Multiple hypothesis trackers (MHTs) are widely accepted as the best means of tracking targets in clu...
Particle filtering is being investigated extensively due to its important feature of target tracking...
The majority of deployed target tracking systems use some variant of the Kalman filter for their sta...
Twisted particle filters are a class of sequential Monte Carlo methods recently introduced by Whitel...