This paper proposes a computational model of visual attention which performs stochastic attentional selection and shift on the visual attention pyramid that is computed for each image frame of a video sequence. In this model, the visual attention pyramid is generated according to the rareness criteria by using intensity contrast, saturation contrast, hue contrast, orientation and motion energy on a Gaussian resolution pyramid. On this attention pyramid, stochastic attentional selection and shift is performed on mechanisms of the dynamic maintenance of IOR(Inhibition Of Return), the bottom-up spatial attention and the adaptive competitive filtering of attention. Experimental results show that this model achieves stochastic visual pop-out to ...
This thesis has presented a computational model for the combination of bottom-up and top-down attent...
UnrestrictedWhat draws in human attention and can we create computational models of it which work th...
A new computational architecture of dynamic visual attention is introduced in this paper. Our approa...
This paper proposes a computational model of visual attention which performs stochastic attentional ...
Abstract—Computer vision attention processes assign variable hypoth-esized importance to different p...
AbstractA model for aspects of visual attention based on the concept of selective tuning is presente...
Research PaperThe human visual system (HVS) has the ability to fixate quickly on the most informativ...
AbstractTo what extent can a computational model of the bottom–up visual attention predict what an o...
This research investigates the feasibility of modeling visual attention (as represented through eye ...
Human vision system actively seeks salient regions and movements in video sequences to reduce the se...
AbstractA biologically motivated computational model of bottom-up visual selective attention was use...
AbstractWe propose a computational model for the task-specific guidance of visual attention in real-...
Abstract—This paper presents an architecture extending bottom-up visual attention for dynamic scene ...
Visual attention, defined as the ability of a biological or artificial vision system to rapidly dete...
Abstract. Defined as attentive process in presence of visual sequences, dynamic visual attention res...
This thesis has presented a computational model for the combination of bottom-up and top-down attent...
UnrestrictedWhat draws in human attention and can we create computational models of it which work th...
A new computational architecture of dynamic visual attention is introduced in this paper. Our approa...
This paper proposes a computational model of visual attention which performs stochastic attentional ...
Abstract—Computer vision attention processes assign variable hypoth-esized importance to different p...
AbstractA model for aspects of visual attention based on the concept of selective tuning is presente...
Research PaperThe human visual system (HVS) has the ability to fixate quickly on the most informativ...
AbstractTo what extent can a computational model of the bottom–up visual attention predict what an o...
This research investigates the feasibility of modeling visual attention (as represented through eye ...
Human vision system actively seeks salient regions and movements in video sequences to reduce the se...
AbstractA biologically motivated computational model of bottom-up visual selective attention was use...
AbstractWe propose a computational model for the task-specific guidance of visual attention in real-...
Abstract—This paper presents an architecture extending bottom-up visual attention for dynamic scene ...
Visual attention, defined as the ability of a biological or artificial vision system to rapidly dete...
Abstract. Defined as attentive process in presence of visual sequences, dynamic visual attention res...
This thesis has presented a computational model for the combination of bottom-up and top-down attent...
UnrestrictedWhat draws in human attention and can we create computational models of it which work th...
A new computational architecture of dynamic visual attention is introduced in this paper. Our approa...