We present a multiple classifier system for model-free tracking. The tasks of detection (finding the object of inter-est), recognition (distinguishing similar objects in a scene), and tracking (retrieving the object to be tracked) are split into separate classifiers in the spirit of simplifying each classification task. The supervised and semi-supervised classifiers are carefully trained on-line in order to increase adaptivity while limiting accumulation of errors, i.e. drift-ing. In the experiments, we demonstrate real-time tracking on several challenging sequences, including multi-object tracking of faces, humans, and other objects. We outper-form other on-line tracking methods especially in case of occlusions and presence of similar obje...
The most interesting information in video images is often related to moving objects. In tracking app...
We introduce a computationally efficient algorithm for multi-object tracking by detection that addre...
We propose a novel approach to designing algorithms for object tracking based on fusing multiple obs...
We present a multiple classifier system for model-free tracking. The tasks of detection (finding the...
We present a multiple classifier system for model-free tracking. The tasks of detection (finding the...
The Problem: While a tracking system is unaware of the identity of any object it tracks, the identit...
Recent advances in multiple object tracking (MOT) rely primarily on visual appearance features to re...
This manuscript summarises the work that I have been involved in for my post-doctoral research and i...
A great challenge in tracking multiple objects is how to locate each object when they interact and f...
We describe a new family of algorithms that analyze time-varying scenes, recognizing and tracking le...
Tracking a moving person is challenging because a person’s appearance in images changes significantl...
Model-free trackers can track arbitrary objects based on a single (bounding-box) annotation of the o...
This thesis addresses the multi-person tracking task with two types of representation: body pose and...
Annual Symposium of the German Association for Pattern Recognition (DAGM), 2006, Berlin (Germany)Thi...
Multiple object tracking, a middle-level task, is a critical foundation to support advanced research...
The most interesting information in video images is often related to moving objects. In tracking app...
We introduce a computationally efficient algorithm for multi-object tracking by detection that addre...
We propose a novel approach to designing algorithms for object tracking based on fusing multiple obs...
We present a multiple classifier system for model-free tracking. The tasks of detection (finding the...
We present a multiple classifier system for model-free tracking. The tasks of detection (finding the...
The Problem: While a tracking system is unaware of the identity of any object it tracks, the identit...
Recent advances in multiple object tracking (MOT) rely primarily on visual appearance features to re...
This manuscript summarises the work that I have been involved in for my post-doctoral research and i...
A great challenge in tracking multiple objects is how to locate each object when they interact and f...
We describe a new family of algorithms that analyze time-varying scenes, recognizing and tracking le...
Tracking a moving person is challenging because a person’s appearance in images changes significantl...
Model-free trackers can track arbitrary objects based on a single (bounding-box) annotation of the o...
This thesis addresses the multi-person tracking task with two types of representation: body pose and...
Annual Symposium of the German Association for Pattern Recognition (DAGM), 2006, Berlin (Germany)Thi...
Multiple object tracking, a middle-level task, is a critical foundation to support advanced research...
The most interesting information in video images is often related to moving objects. In tracking app...
We introduce a computationally efficient algorithm for multi-object tracking by detection that addre...
We propose a novel approach to designing algorithms for object tracking based on fusing multiple obs...