© 2015 Zhang et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. Dictionary learning is a method of acquiring a collection of atoms for subsequent signal representation. Due to its excellent representation ability, dictionary learning has been widely applied in multimedia and computer vision. However, conventional dictionary learning algorithms fail to deal with multi-modal datasets. In this paper, we propose an online multi-modal robust non-negative dictionary learning (OMRNDL) algorithm to overcome this deficiency. Notably, OMRNDL casts visual trackin...
Sparse representation-based methods have been successfully applied to visual tracking. However, comp...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
none6noWe propose a novel approach to online visual tracking that combines the robustness of sparse ...
Dictionary learning is a method of acquiring a collection of atoms for subsequent signal representat...
This paper studies the visual tracking problem in video sequences and presents a novel robust sparse...
This dissertation describes a novel selection-based dictionary learning method with a sparse represe...
We formulate object tracking under the particle filter framework as a collaborative tracking problem...
Sparse representation method has been widely applied to visual tracking. Most of existing tracking a...
© 2017 IEEE. It has been extensively observed that an accurate appearance model is critical to achie...
Existing sparse representation-based visual tracking methods detect the target positions by minimizi...
This dissertation describes a novel selection-based dictionary learning method with a sparse represe...
© 1991-2012 IEEE. Discriminative dictionary learning (DDL) provides an appealing paradigm for appear...
To tackle robust object tracking for video sensor-based applications, an online discriminative algor...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
Dictionary learning plays an important role in machine learning, where data vectors are modeled as a...
Sparse representation-based methods have been successfully applied to visual tracking. However, comp...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
none6noWe propose a novel approach to online visual tracking that combines the robustness of sparse ...
Dictionary learning is a method of acquiring a collection of atoms for subsequent signal representat...
This paper studies the visual tracking problem in video sequences and presents a novel robust sparse...
This dissertation describes a novel selection-based dictionary learning method with a sparse represe...
We formulate object tracking under the particle filter framework as a collaborative tracking problem...
Sparse representation method has been widely applied to visual tracking. Most of existing tracking a...
© 2017 IEEE. It has been extensively observed that an accurate appearance model is critical to achie...
Existing sparse representation-based visual tracking methods detect the target positions by minimizi...
This dissertation describes a novel selection-based dictionary learning method with a sparse represe...
© 1991-2012 IEEE. Discriminative dictionary learning (DDL) provides an appealing paradigm for appear...
To tackle robust object tracking for video sensor-based applications, an online discriminative algor...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
Dictionary learning plays an important role in machine learning, where data vectors are modeled as a...
Sparse representation-based methods have been successfully applied to visual tracking. However, comp...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
none6noWe propose a novel approach to online visual tracking that combines the robustness of sparse ...