We develop an interactive likelihood (ILH) for sequential Monte Carlo (SMC) methods for image-based multiple target tracking applications. The purpose of the ILH is to improve tracking accuracy by reducing the need for data association. In addition, we integrate a recently developed deep neural network for pedestrian detection along with the ILH with a multi-Bernoulli filter. We evaluate the performance of the multi-Bernoulli filter with the ILH and the pedestrian detector in a number of publicly available datasets (2003 PETS INMOVE, Australian Rules Football League (AFL) and TUD-Stadtmitte) using standard, well-known multi-target tracking metrics (optimal sub-pattern assignment (OSPA) and classification of events, activities and relationsh...
We propose a multi-target tracking algorithm based on the probability hypothesis density (PHD) filte...
In this paper, we consider a single object visual tracking problem using multi-object filtering tech...
We propose an online multi-target tracker that exploits both high- and low-confidence target detecti...
We develop an interactive likelihood (ILH) for sequential Monte Carlo (SMC) methods for image-based ...
In this thesis, a simple yet effective technique is presented for increasing the accuracy of multi-t...
This paper presents a novel Bayesian method to track multiple targets in an image sequence without e...
This paper presents a novel Bayesian method to track multiple targets in an image sequence without e...
Most visual multi-target tracking techniques in the literature employ a detection routine to map the...
Most visual multi-target tracking techniques in the literature employ a detection routine to map the...
This correspondence presents a novel method for simultaneous tracking of multiple non-stationary tar...
This paper presents a method for simultaneous classification and robust tracking of traffic particip...
The existing multiple model hypothesis density filter can estimate the number and state of maneuveri...
In this paper, we propose the labeled multi-Bernoulli filter which explicitly estimates target track...
In this paper, a dynamic multi-modal fusion scheme for tracking multiple targets with Monte-Carlo fi...
This paper addresses extended multi-target tracking in clutter, i.e. tracking targets that may produ...
We propose a multi-target tracking algorithm based on the probability hypothesis density (PHD) filte...
In this paper, we consider a single object visual tracking problem using multi-object filtering tech...
We propose an online multi-target tracker that exploits both high- and low-confidence target detecti...
We develop an interactive likelihood (ILH) for sequential Monte Carlo (SMC) methods for image-based ...
In this thesis, a simple yet effective technique is presented for increasing the accuracy of multi-t...
This paper presents a novel Bayesian method to track multiple targets in an image sequence without e...
This paper presents a novel Bayesian method to track multiple targets in an image sequence without e...
Most visual multi-target tracking techniques in the literature employ a detection routine to map the...
Most visual multi-target tracking techniques in the literature employ a detection routine to map the...
This correspondence presents a novel method for simultaneous tracking of multiple non-stationary tar...
This paper presents a method for simultaneous classification and robust tracking of traffic particip...
The existing multiple model hypothesis density filter can estimate the number and state of maneuveri...
In this paper, we propose the labeled multi-Bernoulli filter which explicitly estimates target track...
In this paper, a dynamic multi-modal fusion scheme for tracking multiple targets with Monte-Carlo fi...
This paper addresses extended multi-target tracking in clutter, i.e. tracking targets that may produ...
We propose a multi-target tracking algorithm based on the probability hypothesis density (PHD) filte...
In this paper, we consider a single object visual tracking problem using multi-object filtering tech...
We propose an online multi-target tracker that exploits both high- and low-confidence target detecti...