This paper presents a long-term object tracking algorithm for event cameras. A first of its kind for these revolutionary cameras, the tracking framework uses a discriminative representation for the object with online learning, and detects and re-tracks the object when it comes back into the field-of-view. One of the key novelties is the use of an event-based local sliding window technique that performs reliably in scenes with cluttered and textured background. In addition, Bayesian bootstrapping is used to assist real-time processing and boost the discriminative power of the object representation. Extensive experiments on a publicly available event camera dataset demonstrates the ability to track and detect arbitrary objects of various shap...
The original publication can be found at www.springerlink.comRobust tracking of objects in video is ...
Tracking the object of interest within a camera's view is essential for crime prevention. This study...
In the paper, we propose a novel event-triggered tracking framework for fast and robust visual track...
This paper presents a long-term object tracking framework with a moving event camera under general t...
In this paper, we study the problem of long-term object tracking, where the object may become fully ...
This work investigates the problem of robust, longterm visual tracking of unknown objects in unconst...
Object tracking is a fundamental task engaged in many cutting-edge applications, e.g. auto-driving a...
This paper describes an approach to tracking multiple independently moving objects observed from mov...
Long term tracking of an object, given only a single in-stance in an initial frame, remains an open ...
Tracking objects of interest in video sequences, referred in computer vision literature as video tra...
Abstract — In many visual multi-object tracking applications, the question when to add or remove a t...
This article aims at a new algorithm for tracking moving objects in the long term. We have tried to ...
Long term tracking of an object, given only a single instance in an initial frame, remains an open p...
Cameras can naturally capture sequences of images, or videos, and for computers to understand videos...
2011-11-18Visual tracking has been an active and fruitful topic in computer vision these days since ...
The original publication can be found at www.springerlink.comRobust tracking of objects in video is ...
Tracking the object of interest within a camera's view is essential for crime prevention. This study...
In the paper, we propose a novel event-triggered tracking framework for fast and robust visual track...
This paper presents a long-term object tracking framework with a moving event camera under general t...
In this paper, we study the problem of long-term object tracking, where the object may become fully ...
This work investigates the problem of robust, longterm visual tracking of unknown objects in unconst...
Object tracking is a fundamental task engaged in many cutting-edge applications, e.g. auto-driving a...
This paper describes an approach to tracking multiple independently moving objects observed from mov...
Long term tracking of an object, given only a single in-stance in an initial frame, remains an open ...
Tracking objects of interest in video sequences, referred in computer vision literature as video tra...
Abstract — In many visual multi-object tracking applications, the question when to add or remove a t...
This article aims at a new algorithm for tracking moving objects in the long term. We have tried to ...
Long term tracking of an object, given only a single instance in an initial frame, remains an open p...
Cameras can naturally capture sequences of images, or videos, and for computers to understand videos...
2011-11-18Visual tracking has been an active and fruitful topic in computer vision these days since ...
The original publication can be found at www.springerlink.comRobust tracking of objects in video is ...
Tracking the object of interest within a camera's view is essential for crime prevention. This study...
In the paper, we propose a novel event-triggered tracking framework for fast and robust visual track...