MPhilThe aim of the thesis is to create and validate models of visual attention. To this extent, a novel unsupervised object detection and tracking framework has been developed by the author. It is demonstrated on people, faces and moving objects and the output is integrated in modelling of visual attention. The proposed approach integrates several types of modules in initialisation, target estimation and validation. Tracking is rst used to introduce high-level features, by extending a popular model based on low-level features[1]. Two automatic models of visual attention are further implemented. One based on winner take it all and inhibition of return as the mech- anisms of selection on a saliency model with high- and low-level fea...
Visual attention is the ability of the human vision system to detect salient parts of the scene, on ...
International audienceVisual attention is a mechanism which filters out redundant visual information...
The present paper surveys visual attention models, showing factors’ categorization. It also studies ...
AbstractTo what extent can a computational model of the bottom–up visual attention predict what an o...
International audienceTo what extent can a computational model of the bottom–up visual attention pre...
Abstract Visual scenes typically contain massive amounts of content that cannot be processed in a s...
When looking at a visual scene, we focalize our attention and our gaze on particular regions of this...
Abstract—Modeling visual attention—particularly stimulus-driven, saliency-based attention—has been a...
AbstractIn this paper, a novel model of object-based visual attention extending Duncan's Integrated ...
This research focuses on enhancing computer vision algorithms using eye tracking and visual saliency...
Humans automatically attend to certain objects in a scene. Better understanding this process could ...
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
We propose a new top down probabilistic saliency model for egocentric video content. It aims to pred...
Visual attention reflects the sampling strategy of the visual system. It is of great research intere...
This paper provides a brief outline of the approaches to modeling human visual attention. Bottom-up ...
Visual attention is the ability of the human vision system to detect salient parts of the scene, on ...
International audienceVisual attention is a mechanism which filters out redundant visual information...
The present paper surveys visual attention models, showing factors’ categorization. It also studies ...
AbstractTo what extent can a computational model of the bottom–up visual attention predict what an o...
International audienceTo what extent can a computational model of the bottom–up visual attention pre...
Abstract Visual scenes typically contain massive amounts of content that cannot be processed in a s...
When looking at a visual scene, we focalize our attention and our gaze on particular regions of this...
Abstract—Modeling visual attention—particularly stimulus-driven, saliency-based attention—has been a...
AbstractIn this paper, a novel model of object-based visual attention extending Duncan's Integrated ...
This research focuses on enhancing computer vision algorithms using eye tracking and visual saliency...
Humans automatically attend to certain objects in a scene. Better understanding this process could ...
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
We propose a new top down probabilistic saliency model for egocentric video content. It aims to pred...
Visual attention reflects the sampling strategy of the visual system. It is of great research intere...
This paper provides a brief outline of the approaches to modeling human visual attention. Bottom-up ...
Visual attention is the ability of the human vision system to detect salient parts of the scene, on ...
International audienceVisual attention is a mechanism which filters out redundant visual information...
The present paper surveys visual attention models, showing factors’ categorization. It also studies ...