AbstractÐA precise analysis of an entire image is computationally wasteful if one is interested in finding a target object located in a subregion of the image. A useful ªattention strategyº can reduce the overall computation by carrying out fast but approximate image measurements and using their results to suggest a promising subregion. This paper proposes a maximum-likelihood attention mechanism that does this. The attention mechanism recognizes that objects are made of parts and that parts have different features. It works by proposing object part and image feature pairings which have the highest likelihood of coming from the target. The exact calculation of the likelihood as well as approximations are provided. The attention mechanism is...
Visual attention reflects the sampling strategy of the visual system. It is of great research intere...
This thesis presents a novel method of evaluating computational attention operators, which select lo...
Current computational models of visual attention focus on bottom-up information and ignore scene con...
Despite embodying fundamentally different assumptions about attentional allocation, a wide range of ...
Integration of goal-driven, top-down attention and image-driven, bottom-up attention is crucial for ...
To effectively find an object in cluttered scenes, a visual attention mechanism is required to searc...
Abstract. Artificial visual attention is one of the key methodologies in-spired from nature that can...
In this paper, we propose a novel selective search method to speed up the object detection via categ...
In this paper, we propose a visual attention module that automatically detects the regions of an inp...
Abstract—Computer vision attention processes assign variable hypoth-esized importance to different p...
Abstract. Studies on visual attention traditionally focus on its physio-logical and psychophysical n...
The top-down guidance of visual attention is one of the main factors allowing hu-mans to effectively...
Recent work in the computational modeling of visual attention has demonstrated that a purely bottom-...
The thesis presents an algorithm for object detection based on a computational model of visual atten...
Current computational models of visual attention focus on bottom-up information and ignore scene con...
Visual attention reflects the sampling strategy of the visual system. It is of great research intere...
This thesis presents a novel method of evaluating computational attention operators, which select lo...
Current computational models of visual attention focus on bottom-up information and ignore scene con...
Despite embodying fundamentally different assumptions about attentional allocation, a wide range of ...
Integration of goal-driven, top-down attention and image-driven, bottom-up attention is crucial for ...
To effectively find an object in cluttered scenes, a visual attention mechanism is required to searc...
Abstract. Artificial visual attention is one of the key methodologies in-spired from nature that can...
In this paper, we propose a novel selective search method to speed up the object detection via categ...
In this paper, we propose a visual attention module that automatically detects the regions of an inp...
Abstract—Computer vision attention processes assign variable hypoth-esized importance to different p...
Abstract. Studies on visual attention traditionally focus on its physio-logical and psychophysical n...
The top-down guidance of visual attention is one of the main factors allowing hu-mans to effectively...
Recent work in the computational modeling of visual attention has demonstrated that a purely bottom-...
The thesis presents an algorithm for object detection based on a computational model of visual atten...
Current computational models of visual attention focus on bottom-up information and ignore scene con...
Visual attention reflects the sampling strategy of the visual system. It is of great research intere...
This thesis presents a novel method of evaluating computational attention operators, which select lo...
Current computational models of visual attention focus on bottom-up information and ignore scene con...