We describe a multiple hypothesis particle filter for tracking targets that will be influenced by the proximity and/or behavior of other targets. Our contribution is to show how a Markov random field motion prior, built on the fly at each time step, can model these interactions to enable more accurate tracking. We present results for a social insect tracking application, where we model the domain knowledge that two targets cannot occupy the same space, and targets will actively avoid collisions. We show that using this model improves track quality and efficiency. Unfortunately, the joint particle tracker we propose suffers from exponential complexity in the number of tracked targets. An approximation to the joint filter, however, consisting...
We address the problem of tracking multiple objects encountered in many situations in signal or imag...
The paper addresses multiple targets tracking problem encountered in number of situations in signal ...
The particle filter offers the optimal Bayesian filter for track before detect with a single target....
We describe a multiple hypothesis particle filter for tracking targets that will be influenced by t...
We describe a Markov chain Monte Carlo based particle filter that effectively deals with interacting...
©2005 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for al...
Particle filtering is being investigated extensively due to its important feature of target tracking...
Abstract – When tracking a large number of targets, it is often computationally expensive to represe...
We address the problem of multitarget tracking encountered in many situations in signal or image pro...
This paper describes a system that uses multiple particle filters to track an unknown number of targ...
In this paper we propose an online tracking algorithm for multiple manoeuvring targets using variabl...
In this work, we introduce two particle filters of linear complexity in the number of particles that...
In this paper we describe an efficient real-time tracking al-gorithm for multiple manoeuvring target...
In this paper, we present computational methods based on particle filters to address the multi-targe...
The problem of modeling accuracy in target tracking has been well studied in the past and is special...
We address the problem of tracking multiple objects encountered in many situations in signal or imag...
The paper addresses multiple targets tracking problem encountered in number of situations in signal ...
The particle filter offers the optimal Bayesian filter for track before detect with a single target....
We describe a multiple hypothesis particle filter for tracking targets that will be influenced by t...
We describe a Markov chain Monte Carlo based particle filter that effectively deals with interacting...
©2005 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for al...
Particle filtering is being investigated extensively due to its important feature of target tracking...
Abstract – When tracking a large number of targets, it is often computationally expensive to represe...
We address the problem of multitarget tracking encountered in many situations in signal or image pro...
This paper describes a system that uses multiple particle filters to track an unknown number of targ...
In this paper we propose an online tracking algorithm for multiple manoeuvring targets using variabl...
In this work, we introduce two particle filters of linear complexity in the number of particles that...
In this paper we describe an efficient real-time tracking al-gorithm for multiple manoeuvring target...
In this paper, we present computational methods based on particle filters to address the multi-targe...
The problem of modeling accuracy in target tracking has been well studied in the past and is special...
We address the problem of tracking multiple objects encountered in many situations in signal or imag...
The paper addresses multiple targets tracking problem encountered in number of situations in signal ...
The particle filter offers the optimal Bayesian filter for track before detect with a single target....