In this paper we address the issue of enhancing salient object detection through diffusion-based techniques. For reliably diffusing the energy from labeled seeds, we propose a novel graph-based diffusion scheme called affinity learning-based diffusion (ALD), which is based on learning full-range affinity between two arbitrary graph nodes. The method differs from the previous existing work where implicit diffusion was formulated as a ranking problem on a graph. In the proposed method, the affinity learning is achieved in a unified graph-based semi-supervised manner, whose outcome is leveraged for global propagation. By properly selecting an affinity learning model, the proposed ALD outperforms the ranking-based diffusion in terms of accurate...
In this paper, visual attention spreading is formulated as a nonlocal diffusion equation. Different ...
In this paper, we propose a novel method for learning graph affinities for salient object detection....
How to identify influential nodes is a central research topic in information diffusion analysis. Man...
Diffusion-based saliency detection is a graph-based technique in which the optimal saliency map is c...
In diffusion-based saliency detection, an image is parti-tioned into superpixels and mapped to a gra...
In the thesis, we propose machine learning algorithms utilising diffusion processes to learn the pai...
Graph-based diffusion techniques have drawn much interest lately for salient object detection. The d...
Graph-based diffusion techniques have drawn much interest lately for salient object detection. The d...
Diffusion-based salient region detection methods have gained great popularity. In most diffusion-bas...
In this work, we propose a generic scheme to promote any diffusion-based salient object detection al...
In statistical learning over large data-sets, labeling all points is expensive and time-consuming. S...
The diffusion of information and spreading influence are ubiquitous in social networks. How to model...
Subspace clustering refers to the problem of finding low-dimensional subspaces (clusters) for high-d...
Diffusion-based semi-supervised learning on graphs consists of diffusing labeled information of a fe...
Clustering data by identifying a subset of representative examples is important for detecting patter...
In this paper, visual attention spreading is formulated as a nonlocal diffusion equation. Different ...
In this paper, we propose a novel method for learning graph affinities for salient object detection....
How to identify influential nodes is a central research topic in information diffusion analysis. Man...
Diffusion-based saliency detection is a graph-based technique in which the optimal saliency map is c...
In diffusion-based saliency detection, an image is parti-tioned into superpixels and mapped to a gra...
In the thesis, we propose machine learning algorithms utilising diffusion processes to learn the pai...
Graph-based diffusion techniques have drawn much interest lately for salient object detection. The d...
Graph-based diffusion techniques have drawn much interest lately for salient object detection. The d...
Diffusion-based salient region detection methods have gained great popularity. In most diffusion-bas...
In this work, we propose a generic scheme to promote any diffusion-based salient object detection al...
In statistical learning over large data-sets, labeling all points is expensive and time-consuming. S...
The diffusion of information and spreading influence are ubiquitous in social networks. How to model...
Subspace clustering refers to the problem of finding low-dimensional subspaces (clusters) for high-d...
Diffusion-based semi-supervised learning on graphs consists of diffusing labeled information of a fe...
Clustering data by identifying a subset of representative examples is important for detecting patter...
In this paper, visual attention spreading is formulated as a nonlocal diffusion equation. Different ...
In this paper, we propose a novel method for learning graph affinities for salient object detection....
How to identify influential nodes is a central research topic in information diffusion analysis. Man...