International audienceConvolutional models of object recognition achieve invariance to spatial transformations largely because of the use of a suitably defined pooling operator. This operator typically takes the form of a max or average function defined across units tuned to the same feature. As a model of the brain's ventral pathway, where computations are carried out by weighted synaptic connections, such pooling can lead to spatial invariance only if the weights that connect similarly tuned units to a given pooling unit are of approximately equal strengths. How identical weights can be learned in the face of nonuniformly distributed data remains unclear. In this letter, we show how various versions of the trace learning rule can help sol...
A robust, fast and general method for estimation of object properties is proposed. It is based on a ...
We show in a 4-layer competitive neuronal network that continuous transformation learning, which use...
Over successive stages, the ventral visual system develops neurons that respond with view, size and ...
Learning by temporal association rules such as Foldiak’s trace rule is an attractive hypothesis that...
Learning by temporal association rules such as Foldiak's trace rule is an attractive hypothesis that...
The inputs to photoreceptors tend to change rapidly over time, whereas physical parameters (e.g. sur...
Learning features invariant to arbitrary transformations in the data is a requirement for any recogn...
How are invariant representations of objects formed in the visual cortex? We describe a neurophysiol...
Visual object recognition is remarkably accurate and robust, yet its neurophysiological underpinning...
How are invariant representations of objects formed in the visual cortex? We describe a neurophysiol...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
In order to develop transformation invariant representations of objects, the visual system must make...
We study the problem of learning from data representations that are invariant to transformations, an...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
The operation of a hierarchical competitive network model (VisNet) of invariance learning in the vis...
A robust, fast and general method for estimation of object properties is proposed. It is based on a ...
We show in a 4-layer competitive neuronal network that continuous transformation learning, which use...
Over successive stages, the ventral visual system develops neurons that respond with view, size and ...
Learning by temporal association rules such as Foldiak’s trace rule is an attractive hypothesis that...
Learning by temporal association rules such as Foldiak's trace rule is an attractive hypothesis that...
The inputs to photoreceptors tend to change rapidly over time, whereas physical parameters (e.g. sur...
Learning features invariant to arbitrary transformations in the data is a requirement for any recogn...
How are invariant representations of objects formed in the visual cortex? We describe a neurophysiol...
Visual object recognition is remarkably accurate and robust, yet its neurophysiological underpinning...
How are invariant representations of objects formed in the visual cortex? We describe a neurophysiol...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
In order to develop transformation invariant representations of objects, the visual system must make...
We study the problem of learning from data representations that are invariant to transformations, an...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
The operation of a hierarchical competitive network model (VisNet) of invariance learning in the vis...
A robust, fast and general method for estimation of object properties is proposed. It is based on a ...
We show in a 4-layer competitive neuronal network that continuous transformation learning, which use...
Over successive stages, the ventral visual system develops neurons that respond with view, size and ...