Individual cells that respond preferentially to particular objects have been found in the ventral visual pathway. How the brain is able to develop neurons that exhibit these object selective responses poses a significant challenge for computational models of object recognition. Typically, many objects make up a complex natural scene and are never presented in isolation. Nonetheless, the visual system is able to build invariant object selective responses. In this paper, we present a model of the ventral visual stream, VisNet, which can solve the problem of learning object selective representations even when multiple objects are always present during training. Past research with the VisNet model has shown that the network can operate successf...
Visual object recognition is remarkably accurate and robust, yet its neurophysiological underpinning...
The effects of cluttered environments are investigated on the performance of a hierarchical multilay...
This work is aimed at understanding and modelling the perceptual stability mechanisms of human visu...
Individual cells that respond preferentially to particular objects have been found in the ventral vi...
Over successive stages, the visual system develops neurons that respond with view, size and position...
Neural responses in the primate ventral visual system become more complex in the later stages of the...
Over successive stages, the ventral visual system develops neurons that respond with view, size and ...
This paper investigates how a neural network model of the ventral visual pathway, VisNet, can form s...
This paper investigates how the visual areas of the brain may learn to segment the bodies of humans ...
AbstractThis paper investigates how the visual areas of the brain may learn to segment the bodies of...
The operation of a hierarchical competitive network model (VisNet) of invariance learning in the vis...
To form view-invariant representations of objects, neurons in the inferior temporal cortex may assoc...
We show in a unifying computational approach that representations of spatial scenes can be formed by...
Abstract Coding for visual stimuli in the ventral stream is known to be invariant to object identit...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...
Visual object recognition is remarkably accurate and robust, yet its neurophysiological underpinning...
The effects of cluttered environments are investigated on the performance of a hierarchical multilay...
This work is aimed at understanding and modelling the perceptual stability mechanisms of human visu...
Individual cells that respond preferentially to particular objects have been found in the ventral vi...
Over successive stages, the visual system develops neurons that respond with view, size and position...
Neural responses in the primate ventral visual system become more complex in the later stages of the...
Over successive stages, the ventral visual system develops neurons that respond with view, size and ...
This paper investigates how a neural network model of the ventral visual pathway, VisNet, can form s...
This paper investigates how the visual areas of the brain may learn to segment the bodies of humans ...
AbstractThis paper investigates how the visual areas of the brain may learn to segment the bodies of...
The operation of a hierarchical competitive network model (VisNet) of invariance learning in the vis...
To form view-invariant representations of objects, neurons in the inferior temporal cortex may assoc...
We show in a unifying computational approach that representations of spatial scenes can be formed by...
Abstract Coding for visual stimuli in the ventral stream is known to be invariant to object identit...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...
Visual object recognition is remarkably accurate and robust, yet its neurophysiological underpinning...
The effects of cluttered environments are investigated on the performance of a hierarchical multilay...
This work is aimed at understanding and modelling the perceptual stability mechanisms of human visu...