By predicting where humans look in natural scenes, we can understand how they perceive complex natural scenes and prioritize information for further high-level visual processing. Several models have been proposed for this purpose, yet there is a gap between best existing saliency models and human performance. While many researchers have developed purely computational models for fixation prediction, less attempts have been made to discover cognitive factors that guide gaze. Here, we study the effect of a particular type of scene structural information, known as the vanishing point, and show that human gaze is attracted to the vanishing point regions. We record eye movements of 10 observers over 532 images, out of which 319 have vanishing poi...
AbstractTo what extent can a computational model of the bottom–up visual attention predict what an o...
Understanding where people look in images is an important problem in computer vision. Despite signif...
AbstractRecent research [Parkhurst, D., Law, K., & Niebur, E., 2002. Modeling the role of salience i...
Under natural viewing conditions, human observers shift their gaze to allocate processing resources ...
AbstractEye tracking has become the de facto standard measure of visual attention in tasks that rang...
Several structural scene cues such as gist, layout, horizontal line, openness, and depth have been s...
The field of computational saliency modelling has its origins in psychophysical studies of visual se...
Under natural viewing conditions, human observers use shifts in gaze to allocate processing ...
For many applications in graphics, design, and human computer interaction, it is essential to unders...
Human visual attention is a complex phenomenon. A computational modeling of this phenomenon must tak...
Most bottom-up models that predict human eye fixations are based on contrast features. The saliency ...
International audienceA computational model of visual attention using visual inferences is proposed....
Springer New York. ISSN : 1866-9956International audienceWhen looking at a scene, we frequently move...
When attempting to understand where people look during scene perception, researchers typically focus...
Most bottom-up models that predict human eye fixations are based on contrast features. The saliency ...
AbstractTo what extent can a computational model of the bottom–up visual attention predict what an o...
Understanding where people look in images is an important problem in computer vision. Despite signif...
AbstractRecent research [Parkhurst, D., Law, K., & Niebur, E., 2002. Modeling the role of salience i...
Under natural viewing conditions, human observers shift their gaze to allocate processing resources ...
AbstractEye tracking has become the de facto standard measure of visual attention in tasks that rang...
Several structural scene cues such as gist, layout, horizontal line, openness, and depth have been s...
The field of computational saliency modelling has its origins in psychophysical studies of visual se...
Under natural viewing conditions, human observers use shifts in gaze to allocate processing ...
For many applications in graphics, design, and human computer interaction, it is essential to unders...
Human visual attention is a complex phenomenon. A computational modeling of this phenomenon must tak...
Most bottom-up models that predict human eye fixations are based on contrast features. The saliency ...
International audienceA computational model of visual attention using visual inferences is proposed....
Springer New York. ISSN : 1866-9956International audienceWhen looking at a scene, we frequently move...
When attempting to understand where people look during scene perception, researchers typically focus...
Most bottom-up models that predict human eye fixations are based on contrast features. The saliency ...
AbstractTo what extent can a computational model of the bottom–up visual attention predict what an o...
Understanding where people look in images is an important problem in computer vision. Despite signif...
AbstractRecent research [Parkhurst, D., Law, K., & Niebur, E., 2002. Modeling the role of salience i...