Existing sparse representation-based visual tracking methods detect the target positions by minimizing the reconstruction error. However, due to complex background, illumination change, and occlusion problems, these methods are difficult to locate the target properly. In this article, we propose a novel visual tracking method based on weighted discriminative dictionaries and a pyramidal feature selection strategy. First, we utilize color features and texture features of the training samples to obtain multiple discriminative dictionaries. Then, we use the position information of those samples to assign weights to the base vectors in dictionaries. For robust visual tracking, we propose a pyramidal sparse feature selection strategy where the w...
© 1991-2012 IEEE. Discriminative dictionary learning (DDL) provides an appealing paradigm for appear...
none6noWe propose a novel approach to online visual tracking that combines the robustness of sparse ...
We formulate object tracking under the particle filter framework as a collaborative tracking problem...
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...
This dissertation describes a novel selection-based dictionary learning method with a sparse represe...
Sparse representation-based methods have been successfully applied to visual tracking. However, comp...
Sparse representation method has been widely applied to visual tracking. Most of existing tracking a...
Visual object tracking is a fundamental research area in the field of computer vision and pattern re...
To tackle robust object tracking for video sensor-based applications, an online discriminative algor...
Feature encoding with respect to an over-complete dic-tionary learned by unsupervised methods, follo...
This paper studies the visual tracking problem in video sequences and presents a novel robust sparse...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
A supervised approach to online-learn a structured sparse and discriminative representation for obje...
Recently, discriminative visual trackers obtain state-of-the-art performance, yet they suffer in the...
© 1991-2012 IEEE. Discriminative dictionary learning (DDL) provides an appealing paradigm for appear...
none6noWe propose a novel approach to online visual tracking that combines the robustness of sparse ...
We formulate object tracking under the particle filter framework as a collaborative tracking problem...
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...
This dissertation describes a novel selection-based dictionary learning method with a sparse represe...
Sparse representation-based methods have been successfully applied to visual tracking. However, comp...
Sparse representation method has been widely applied to visual tracking. Most of existing tracking a...
Visual object tracking is a fundamental research area in the field of computer vision and pattern re...
To tackle robust object tracking for video sensor-based applications, an online discriminative algor...
Feature encoding with respect to an over-complete dic-tionary learned by unsupervised methods, follo...
This paper studies the visual tracking problem in video sequences and presents a novel robust sparse...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
A supervised approach to online-learn a structured sparse and discriminative representation for obje...
Recently, discriminative visual trackers obtain state-of-the-art performance, yet they suffer in the...
© 1991-2012 IEEE. Discriminative dictionary learning (DDL) provides an appealing paradigm for appear...
none6noWe propose a novel approach to online visual tracking that combines the robustness of sparse ...
We formulate object tracking under the particle filter framework as a collaborative tracking problem...