International audienceWe develop a visuomotor model that implements visual search as a focal accuracy-seeking policy, with the target's position and category drawn independently from a common generative process. Consistently with the anatomical separation between the ventral versus dorsal pathways, the model is composed of two pathways that respectively infer what to see and where to look. The "What" network is a classical deep learning classifier that only processes a small region around the center of fixation, providing a "foveal" accuracy. In contrast, the "Where" network processes the full visual field in a biomimetic fashion, using a log-polar retinotopic encoding, which is preserved up to the action selection level. In our model, the ...
Work done in the Computer Science Department, Robotics & Vision area, and published as part of the...
Abstract—We present a foveated object detector (FOD) as a biologically-inspired alternative to the s...
The human visual system is remarkably adept at finding objects of interest in cluttered visual envir...
International audienceWe develop a visuomotor model that implements visual search as a focal accurac...
While abundant in biology, foveated vision is nearly absent from computational models and especially...
Computer vision has made a significant progress in recent years thanks to advancement in neural netw...
Humans and many other species sense visual information with varying spatial resolution across the vi...
When we move our eyes, we process objects in the visual field with different spatial resolution due ...
The human visual system is foveated, that is, outside the central visual field resolution and acuity...
International audienceVisual search is an essential cognitive ability, offering a prototypical contr...
Modern computational models of attention predict fixations using saliency maps and target maps, whic...
Many animals and humans process the visual field with varying spatial resolution (foveated vision) a...
Abstract. This paper proposes a neuronal-based solution to active vi-sual search, that is, visual se...
Humans perceives the world by directing the center of gaze from one location to another via rapid ey...
AbstractVisual cognition depends critically on the moment-to-moment orientation of gaze. To change t...
Work done in the Computer Science Department, Robotics & Vision area, and published as part of the...
Abstract—We present a foveated object detector (FOD) as a biologically-inspired alternative to the s...
The human visual system is remarkably adept at finding objects of interest in cluttered visual envir...
International audienceWe develop a visuomotor model that implements visual search as a focal accurac...
While abundant in biology, foveated vision is nearly absent from computational models and especially...
Computer vision has made a significant progress in recent years thanks to advancement in neural netw...
Humans and many other species sense visual information with varying spatial resolution across the vi...
When we move our eyes, we process objects in the visual field with different spatial resolution due ...
The human visual system is foveated, that is, outside the central visual field resolution and acuity...
International audienceVisual search is an essential cognitive ability, offering a prototypical contr...
Modern computational models of attention predict fixations using saliency maps and target maps, whic...
Many animals and humans process the visual field with varying spatial resolution (foveated vision) a...
Abstract. This paper proposes a neuronal-based solution to active vi-sual search, that is, visual se...
Humans perceives the world by directing the center of gaze from one location to another via rapid ey...
AbstractVisual cognition depends critically on the moment-to-moment orientation of gaze. To change t...
Work done in the Computer Science Department, Robotics & Vision area, and published as part of the...
Abstract—We present a foveated object detector (FOD) as a biologically-inspired alternative to the s...
The human visual system is remarkably adept at finding objects of interest in cluttered visual envir...