In this paper, a supervised approach to online learn a structured sparse and discriminative representation for object tracking is presented. Label information from training data is incorporated into the dictionary learning process to construct a robust and discriminative dictionary. This is accomplished by adding an ideal-code regularization term and classification error term to the unified objective function. By minimizing the unified objective function we learn the high quality dictionary and optimal linear multi-classifier jointly. Combined with robust sparse coding, the learned classifier is employed directly to separate the object from background. As the tracking continues, the proposed algorithm alternates between robust sparse coding...
Recently, many sparse coding based approaches have been proposed for human action recognition. Howev...
This paper studies the visual tracking problem in video sequences and presents a novel robust sparse...
It is now well established that sparse representation models are working effectively for many visual...
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...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
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...
Online dictionary learning is particularly useful for pro-cessing large-scale and dynamic data in co...
Object tracking in a particle filter framework is formulated as a binary classification problem. The...
To tackle robust object tracking for video sensor-based applications, an online discriminative algor...
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...
© 2014 IEEE. Dictionary learning (DL) for sparse coding has shown promising results in classificatio...
none6noWe propose a novel approach to online visual tracking that combines the robustness of sparse ...
Recently, many sparse coding based approaches have been proposed for human action recognition. Howev...
This paper studies the visual tracking problem in video sequences and presents a novel robust sparse...
It is now well established that sparse representation models are working effectively for many visual...
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...
In this paper, a supervised approach to online learn a structured sparse and discriminative represen...
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...
Online dictionary learning is particularly useful for pro-cessing large-scale and dynamic data in co...
Object tracking in a particle filter framework is formulated as a binary classification problem. The...
To tackle robust object tracking for video sensor-based applications, an online discriminative algor...
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...
© 2014 IEEE. Dictionary learning (DL) for sparse coding has shown promising results in classificatio...
none6noWe propose a novel approach to online visual tracking that combines the robustness of sparse ...
Recently, many sparse coding based approaches have been proposed for human action recognition. Howev...
This paper studies the visual tracking problem in video sequences and presents a novel robust sparse...
It is now well established that sparse representation models are working effectively for many visual...