A key problem in learning multiple objects from unlabeled images is that it is a priori impossible to tell which part of the image corresponds to each individual object, and which part is irrelevant clutter which is not associated to the objects. We investigate empirically to what extent pure bottom-up attention can extract useful information about the location, size and shape of objects from images and demonstrate how this information can be utilized to enable unsupervised learning of objects from unlabeled images. Our experiments demonstrate that the proposed approach to using bottom-up attention is indeed useful for a variety of applications
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
Visual search and other attentionally demanding processes are often guided from the top down when a ...
The human visual attention system (HVA) encompasses a set of interconnected neurological modules tha...
A key problem in learning representations of multiple objects from unlabeled images is that it is a ...
SummaryDrawing portraits upside down is a trick that allows novice artists to reproduce lower-level ...
Selective visual attention provides an effective mechanism to serialize perception of complex scenes...
Artificial vision systems can not process all the information that they receive from the world in re...
Apart from helping shed some light on human perceptual mechanisms, modeling visual attention has imp...
Current computational models of visual attention focus on bottom-up information and ignore scene con...
Current computational models of visual attention focus on bottom-up information and ignore scene con...
The human visual system can recognize several thousand object categories irrespective of their posit...
Attention is crucial for autonomous agents interacting with complex environments. In a real scenario...
Visual search and other attentionally demanding processes are often guided from the top down when a ...
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
Visual search and other attentionally demanding processes are often guided from the top down when a ...
The human visual attention system (HVA) encompasses a set of interconnected neurological modules tha...
A key problem in learning representations of multiple objects from unlabeled images is that it is a ...
SummaryDrawing portraits upside down is a trick that allows novice artists to reproduce lower-level ...
Selective visual attention provides an effective mechanism to serialize perception of complex scenes...
Artificial vision systems can not process all the information that they receive from the world in re...
Apart from helping shed some light on human perceptual mechanisms, modeling visual attention has imp...
Current computational models of visual attention focus on bottom-up information and ignore scene con...
Current computational models of visual attention focus on bottom-up information and ignore scene con...
The human visual system can recognize several thousand object categories irrespective of their posit...
Attention is crucial for autonomous agents interacting with complex environments. In a real scenario...
Visual search and other attentionally demanding processes are often guided from the top down when a ...
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
Object recognition and visual attention are tightly linked processes in human perception. Over the l...
Visual search and other attentionally demanding processes are often guided from the top down when a ...
The human visual attention system (HVA) encompasses a set of interconnected neurological modules tha...