This thesis is concerned with single and multiple target visual tracking algorithms and their application in the real world. While they are both powerful and general, one of the main challenges of tracking using particle filter-based algorithms is to manage the particle spread. Too wide a spread leads to dispersal of particles onto clutter, but limited spread may lead to difficulty when fast-moving objects and/or high-speed camera motion throw trackers away from their target(s). This thesis addresses the particle spread management problem. Three novel tracking algorithms are presented, each of which combines particle filtering and Kernel Mean Shift methods to produce more robust and accurate tracking. The first single target tracking algori...
We address the problem of robust multi-target tracking within the application of hockey player track...
Robust and accurate people tracking is a key task in many promising computer-vision applications. On...
Real-time robust tracking for multiple non-rigid objects is a challenging task in computer vision re...
This thesis is concerned with single and multiple target visual tracking algorithms and their applic...
Most of the sequential importance resampling tracking algorithms use arbitrarily high number of part...
Abstract. We present a new approach towards efficient and robust tracking by incorporating the effic...
This paper addresses the issue of tracking a single visual object through crowded scenarios, where a...
In this paper, we introduce a novel algorithm which buildsupon the combined anisotropic mean-shift a...
Abstract — Particle filter and mean shift are two important methods for tracking object in video seq...
Efficient multiple objects detection and tracking using particle filter presents a new approach for ...
This thesis is concerned with the core computer vision challenge of obtaining efficient and robust v...
Visual tracking is a critical task in many computer vision applications such as surveillance, vehicl...
We propose a tracking algorithm based on a combination of Particle Filter and Mean Shift, and enhanc...
Tracking a mobile object is one of the important topics in pattern recognition, but style has some o...
A very efficient and robust visual object tracking algo-rithm based on the particle filter is presen...
We address the problem of robust multi-target tracking within the application of hockey player track...
Robust and accurate people tracking is a key task in many promising computer-vision applications. On...
Real-time robust tracking for multiple non-rigid objects is a challenging task in computer vision re...
This thesis is concerned with single and multiple target visual tracking algorithms and their applic...
Most of the sequential importance resampling tracking algorithms use arbitrarily high number of part...
Abstract. We present a new approach towards efficient and robust tracking by incorporating the effic...
This paper addresses the issue of tracking a single visual object through crowded scenarios, where a...
In this paper, we introduce a novel algorithm which buildsupon the combined anisotropic mean-shift a...
Abstract — Particle filter and mean shift are two important methods for tracking object in video seq...
Efficient multiple objects detection and tracking using particle filter presents a new approach for ...
This thesis is concerned with the core computer vision challenge of obtaining efficient and robust v...
Visual tracking is a critical task in many computer vision applications such as surveillance, vehicl...
We propose a tracking algorithm based on a combination of Particle Filter and Mean Shift, and enhanc...
Tracking a mobile object is one of the important topics in pattern recognition, but style has some o...
A very efficient and robust visual object tracking algo-rithm based on the particle filter is presen...
We address the problem of robust multi-target tracking within the application of hockey player track...
Robust and accurate people tracking is a key task in many promising computer-vision applications. On...
Real-time robust tracking for multiple non-rigid objects is a challenging task in computer vision re...