This paper investigates how a neural network model of the ventral visual pathway, VisNet, can form separate view invariant representations of a number of objects seen rotating together. In particular, in the current work one of the rotating objects is always partially occluded by the other objects present during training. A key challenge for the model is to link together the separate partial views of the occluded object into a single view invariant representation of that object. We show how this can be achieved by Continuous Transformation (CT) learning, which relies on spatial similarity between successive views of each object. After training, the network had developed cells in the output layer which had learned to respond invariantly to p...
In order to perform object recognition, it is necessary to form perceptual representations that are ...
We show that spatial continuity can enable a network to learn translation invariant representations ...
We show that spatial continuity can enable a network to learn translation invariant representations ...
Over successive stages, the visual system develops neurons that respond with view, size and position...
Individual cells that respond preferentially to particular objects have been found in the ventral vi...
To form view-invariant representations of objects, neurons in the inferior temporal cortex may assoc...
Over successive stages, the ventral visual system develops neurons that respond with view, size and ...
In order to perform object recognition, it is necessary to form perceptual representations that are ...
We show in a 4-layer competitive neuronal network that continuous transformation learning, which use...
AbstractWe show in a 4-layer competitive neuronal network that continuous transformation learning, w...
The operation of a hierarchical competitive network model (VisNet) of invariance learning in the vis...
First, neurophysiological evidence for the learning of invariant representations in the inferior tem...
This work is aimed at understanding and modelling the perceptual stability mechanisms of human visu...
The effects of cluttered environments are investigated on the performance of a hierarchical multilay...
Invariant object recognition is maybe the most basic and fundamental property of our visual system. ...
In order to perform object recognition, it is necessary to form perceptual representations that are ...
We show that spatial continuity can enable a network to learn translation invariant representations ...
We show that spatial continuity can enable a network to learn translation invariant representations ...
Over successive stages, the visual system develops neurons that respond with view, size and position...
Individual cells that respond preferentially to particular objects have been found in the ventral vi...
To form view-invariant representations of objects, neurons in the inferior temporal cortex may assoc...
Over successive stages, the ventral visual system develops neurons that respond with view, size and ...
In order to perform object recognition, it is necessary to form perceptual representations that are ...
We show in a 4-layer competitive neuronal network that continuous transformation learning, which use...
AbstractWe show in a 4-layer competitive neuronal network that continuous transformation learning, w...
The operation of a hierarchical competitive network model (VisNet) of invariance learning in the vis...
First, neurophysiological evidence for the learning of invariant representations in the inferior tem...
This work is aimed at understanding and modelling the perceptual stability mechanisms of human visu...
The effects of cluttered environments are investigated on the performance of a hierarchical multilay...
Invariant object recognition is maybe the most basic and fundamental property of our visual system. ...
In order to perform object recognition, it is necessary to form perceptual representations that are ...
We show that spatial continuity can enable a network to learn translation invariant representations ...
We show that spatial continuity can enable a network to learn translation invariant representations ...