Main drawbacks in single-camera multi-target visual tracking can be partially removed by increasing the amount of information gathered on the scene, i.e. by adding cameras. By adopting such a multi-camera approach, multiple sensors cooperate for overall scene understanding. However, new issues arise such as data association and data fusion. This work addresses the issue of evaluating the performance of a multicamera tracking algorithm based on Rao-Blackwellized Monte Carlo data association (RBMCDA) on real data. For this purpose, a new metric based on three performance indexes is developed
In this paper, a robust and efficient approach for multicamera human tracking is presented. The appr...
We address the problem of robust multi-target tracking within the application of hockey player trac...
As the number of surveillance cameras deployed in public areas increasing rapidly, automatic multi-t...
Main drawbacks in single-camera multi-target visual tracking can be partially removed by increasing ...
To help accelerate progress in multi-target, multi-camera tracking systems, we present (i) a new pai...
Multi-target tracking (MTT) is an active and challenging research topic. Many different approaches t...
In this paper, we propose a novel Non-Overlapping Cam-era Network Tracking Dataset (CamNeT) for eval...
Background: Video surveillance is a growing area where it can help with deterring crime, support inv...
When tracking multiple targets using multiple sensors, the performance evaluation of different estim...
Abstract—Multi-object tracking is still a challenging task in computer vision. We propose a robust a...
This thesis describes work towards a more advanced multiple camera tracking system. This work was sp...
© 2016 IEEE. Multi-target tracking (MTT) is the task of localizing objects of interest in a video an...
A massive amount of video data is recorded daily for forensic post analysis and computer vision appl...
In this paper, we consider multi-object target tracking using video reference datasets. Our objectiv...
In this paper, we consider multi-object target tracking using video reference datasets. Our objectiv...
In this paper, a robust and efficient approach for multicamera human tracking is presented. The appr...
We address the problem of robust multi-target tracking within the application of hockey player trac...
As the number of surveillance cameras deployed in public areas increasing rapidly, automatic multi-t...
Main drawbacks in single-camera multi-target visual tracking can be partially removed by increasing ...
To help accelerate progress in multi-target, multi-camera tracking systems, we present (i) a new pai...
Multi-target tracking (MTT) is an active and challenging research topic. Many different approaches t...
In this paper, we propose a novel Non-Overlapping Cam-era Network Tracking Dataset (CamNeT) for eval...
Background: Video surveillance is a growing area where it can help with deterring crime, support inv...
When tracking multiple targets using multiple sensors, the performance evaluation of different estim...
Abstract—Multi-object tracking is still a challenging task in computer vision. We propose a robust a...
This thesis describes work towards a more advanced multiple camera tracking system. This work was sp...
© 2016 IEEE. Multi-target tracking (MTT) is the task of localizing objects of interest in a video an...
A massive amount of video data is recorded daily for forensic post analysis and computer vision appl...
In this paper, we consider multi-object target tracking using video reference datasets. Our objectiv...
In this paper, we consider multi-object target tracking using video reference datasets. Our objectiv...
In this paper, a robust and efficient approach for multicamera human tracking is presented. The appr...
We address the problem of robust multi-target tracking within the application of hockey player trac...
As the number of surveillance cameras deployed in public areas increasing rapidly, automatic multi-t...