Sparse coding is an emerging method that has been successfully applied to both robust object tracking and recognition in the vision literature. In this paper, we propose to explore a sparse coding-based approach toward joint object tracking-and-recognition and explore its potential in the analysis of forward-looking infrared (FLIR) video to support nighttime machine vision systems. A key technical contribution of this work is to unify existing sparse coding-based approaches toward tracking and recognition under the same framework, so that they can benefit from each other in a closed-loop. On the one hand, tracking the same object through temporal frames allows us to achieve improved recognition performance through dynamical updating of temp...
Due to increasing demand on deployable surveillance systems in recent years, object tracking and act...
The subject of this paper is the visual object tracking in infrared (IR) videos. Our contribution is...
In this paper, we present our approach to robust background modelling which combines visible and the...
In this paper, we propose a robust tracking method for infrared object. We introduce the appearance ...
International audienceMulti-object tracking is a challenging task, especially when the persistence o...
The automatic detection and tracking of pedestrians in imagery constitute important and challenging ...
Compressive sensing, or sparse representation, has played a fundamental role in many fields of scien...
Robustly and efficiently tracking pedestrians in the infrared spectrum is a crucial requirement for ...
Robust visual tracking plays an important role in many applications such as security surveillance, h...
Sparse representation method has been widely applied to visual tracking. Most of existing tracking a...
In human tracking, sparse representation successfully localises the human in a video with minimal re...
Tracking algorithms with low computational complexity and reliable performance are important in deve...
Tracking pedestrian targets in forward-looking infrared video sequences is a crucial component of a ...
This paper proposes a new visual tracking method by constructing the robust appearance model of the ...
Object tracking is a challenging issue in computer vision and it has been studied by numerous rese...
Due to increasing demand on deployable surveillance systems in recent years, object tracking and act...
The subject of this paper is the visual object tracking in infrared (IR) videos. Our contribution is...
In this paper, we present our approach to robust background modelling which combines visible and the...
In this paper, we propose a robust tracking method for infrared object. We introduce the appearance ...
International audienceMulti-object tracking is a challenging task, especially when the persistence o...
The automatic detection and tracking of pedestrians in imagery constitute important and challenging ...
Compressive sensing, or sparse representation, has played a fundamental role in many fields of scien...
Robustly and efficiently tracking pedestrians in the infrared spectrum is a crucial requirement for ...
Robust visual tracking plays an important role in many applications such as security surveillance, h...
Sparse representation method has been widely applied to visual tracking. Most of existing tracking a...
In human tracking, sparse representation successfully localises the human in a video with minimal re...
Tracking algorithms with low computational complexity and reliable performance are important in deve...
Tracking pedestrian targets in forward-looking infrared video sequences is a crucial component of a ...
This paper proposes a new visual tracking method by constructing the robust appearance model of the ...
Object tracking is a challenging issue in computer vision and it has been studied by numerous rese...
Due to increasing demand on deployable surveillance systems in recent years, object tracking and act...
The subject of this paper is the visual object tracking in infrared (IR) videos. Our contribution is...
In this paper, we present our approach to robust background modelling which combines visible and the...