© 2014 IEEE. In this paper, a novel and robust tracking method based on efficient manifold ranking is proposed. For tracking, tracked results are taken as labeled nodes while candidate samples are taken as unlabeled nodes, and the goal of tracking is to search the unlabeled sample that is the most relevant with existing labeled nodes by manifold ranking algorithm. Meanwhile, we adopt non-adaptive random projections to preserve the structure of original image space, and a very sparse measurement matrix is used to efficiently extract low-dimensional compres-sive features for object representation. Furthermore, spatial context is used to improve the robustness to appearance variations. Experimental results on some challenging video sequences s...
This paper proposes a novel semi-supervised dimensionality reduction learning algorithm for the rank...
The appearance model has been shown to be essential for robust visual tracking since it is the basic...
Correlation filters (CF) combined with pre-trained convolutional neural network (CNN) feature extra...
© 2015 Elsevier Ltd. All rights reserved. Abstract In this paper, a novel and robust tracking method...
In this paper, we propose a manifold regularized correlation tracking method with augmented samples....
In visual tracking, usually only a small number of samples are labeled, and most existing deep learn...
Manifold Ranking is a graph-based ranking algorithm being successfully applied to retrieve images fr...
© 2016 TCCT. In this paper, the Locality-constrained Linear Coding(LLC) algorithm is incorporated in...
Most sparse linear representation-based trackers need to solve a computationally expensive ℓ₁-regula...
One of the challenges in image search is to learn with few labeled examples. Existing solutions main...
The existing sparse representation-based visual trackers mostly suffer from both being time consumin...
Abstract—Manifold learning has been a popular method in many areas such as classification and recogn...
Discriminative correlation filter (DCF) has achieved advanced performance in visual object tracking ...
Region covariance (RC) descriptor is an effective and efficient feature for visual tracking. Current...
Visual tracking task is divided into classification and regression tasks, and manifold features are ...
This paper proposes a novel semi-supervised dimensionality reduction learning algorithm for the rank...
The appearance model has been shown to be essential for robust visual tracking since it is the basic...
Correlation filters (CF) combined with pre-trained convolutional neural network (CNN) feature extra...
© 2015 Elsevier Ltd. All rights reserved. Abstract In this paper, a novel and robust tracking method...
In this paper, we propose a manifold regularized correlation tracking method with augmented samples....
In visual tracking, usually only a small number of samples are labeled, and most existing deep learn...
Manifold Ranking is a graph-based ranking algorithm being successfully applied to retrieve images fr...
© 2016 TCCT. In this paper, the Locality-constrained Linear Coding(LLC) algorithm is incorporated in...
Most sparse linear representation-based trackers need to solve a computationally expensive ℓ₁-regula...
One of the challenges in image search is to learn with few labeled examples. Existing solutions main...
The existing sparse representation-based visual trackers mostly suffer from both being time consumin...
Abstract—Manifold learning has been a popular method in many areas such as classification and recogn...
Discriminative correlation filter (DCF) has achieved advanced performance in visual object tracking ...
Region covariance (RC) descriptor is an effective and efficient feature for visual tracking. Current...
Visual tracking task is divided into classification and regression tasks, and manifold features are ...
This paper proposes a novel semi-supervised dimensionality reduction learning algorithm for the rank...
The appearance model has been shown to be essential for robust visual tracking since it is the basic...
Correlation filters (CF) combined with pre-trained convolutional neural network (CNN) feature extra...