© 2005 IEEERobustly tracking moving objects in video sequences is one of the key problems in computer vision. In this paper we introduce a computationally efficient nonlinear kernel learning strategy to find a discriminative model which distinguishes the tracked object from the background. Principal component analysis and linear discriminant analysis have been applied to this problem with some success. These techniques are limited, however, by the fact that they are capable only of identifying linear subspaces within the data. Kernel based methods, in contrast, are able to extract nonlinear subspaces, and thus represent more complex characteristics of the tracked object and background. This is a particular advantage when tracking deformable...
One of the major challenges that visual tracking algorithms face nowadays is being able to cope with...
© 2014 IEEE. It is a challenging task to develop an effective and robust visual tracking method due ...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
In this thesis, I aim to advance the theories of online non-linear subspace learning through the dev...
This paper presents a simple but robust visual tracking algorithm based on representing the appearan...
The objective of visual object tracking is to find the location, orientation and scale (size) of an ...
This paper proposes a robust object tracking method in video where the time-varying principal compon...
We propose an exact framework for online learning with a family of indefinite (not positive) kernels...
The distinguishment between the object appearance and the background is the useful cues available fo...
Abstract. Visual tracking is one of the central problems in computer vision. A crucial problem of tr...
Video-based target tracking, in essence, deals with nonstationary image streams, which is a challeng...
This thesis is concerned with the core computer vision challenge of obtaining efficient and robust v...
In this paper, a new adaptive subspace learning model based on incremental nonparametric discriminan...
Most of the tracking methods attempt to build up feature spaces to represent the appearance of a tar...
© 2015 SPIE and IS & T. It is a challenging task to develop an effective and robust object tracking ...
One of the major challenges that visual tracking algorithms face nowadays is being able to cope with...
© 2014 IEEE. It is a challenging task to develop an effective and robust visual tracking method due ...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...
In this thesis, I aim to advance the theories of online non-linear subspace learning through the dev...
This paper presents a simple but robust visual tracking algorithm based on representing the appearan...
The objective of visual object tracking is to find the location, orientation and scale (size) of an ...
This paper proposes a robust object tracking method in video where the time-varying principal compon...
We propose an exact framework for online learning with a family of indefinite (not positive) kernels...
The distinguishment between the object appearance and the background is the useful cues available fo...
Abstract. Visual tracking is one of the central problems in computer vision. A crucial problem of tr...
Video-based target tracking, in essence, deals with nonstationary image streams, which is a challeng...
This thesis is concerned with the core computer vision challenge of obtaining efficient and robust v...
In this paper, a new adaptive subspace learning model based on incremental nonparametric discriminan...
Most of the tracking methods attempt to build up feature spaces to represent the appearance of a tar...
© 2015 SPIE and IS & T. It is a challenging task to develop an effective and robust object tracking ...
One of the major challenges that visual tracking algorithms face nowadays is being able to cope with...
© 2014 IEEE. It is a challenging task to develop an effective and robust visual tracking method due ...
Kernel-based mean shift (MS) trackers have proven to be a promising alternative to stochastic partic...