We describe an algorithm for self-organizing connections from a source array to a target array of neurons that is inspired by neural growth cone guidance. Each source neuron projects a Gaussian pattern of connections to the target layer. Learning modifies the pattern center location. The small number of parameters required to specify connectivity has enabled this algorithm\u27s implementation in a neuromorphic silicon system. We demonstrate that this algorithm can lead to topographic feature maps similar to those observed in the visual cortex, and characterize its operation as function maximization, which connects this approach with other models of cortical map formation
A computational model of a self-structuring neuronal net is presented in which repetitively applied ...
This paper presents an algorithm to form a topographic map resembling to the self-organizing map. Th...
We investigate a self-organizing network model to account for the computational property of the infe...
We describe an algorithm for self-organizing connections from a source array to a target array of ne...
An important phenomenon seen in many areas of biological brains and recently in deep learning archit...
Neuromorphic engineers have achieved considerable success in devising silicon implementations of pro...
This paper shows how the relationship between two arrays of artificial neurons, representing differe...
We describe a self-configuring neuromorphic chip that uses a model of activity-dependent axon remode...
We characterize the first hardware implementation of a self-organizing map algorithm based on axon m...
In mammalian visual cortex, neurons are organized according to their functional properties into mult...
Obermayer K, Ritter H, Schulten K. Development and Spatial Structure of Cortical Feature Maps: A Mod...
This paper presents a novel self-organising neural network. It has been developed for use as a simpl...
This paper presents a novel self-organising neural network. It has been developed for use as a simpl...
The human ventral visual stream has a highly systematic organization of object information, but the ...
Inferotemporal (IT) cortex in humans and other primates is topographically organized, containing mul...
A computational model of a self-structuring neuronal net is presented in which repetitively applied ...
This paper presents an algorithm to form a topographic map resembling to the self-organizing map. Th...
We investigate a self-organizing network model to account for the computational property of the infe...
We describe an algorithm for self-organizing connections from a source array to a target array of ne...
An important phenomenon seen in many areas of biological brains and recently in deep learning archit...
Neuromorphic engineers have achieved considerable success in devising silicon implementations of pro...
This paper shows how the relationship between two arrays of artificial neurons, representing differe...
We describe a self-configuring neuromorphic chip that uses a model of activity-dependent axon remode...
We characterize the first hardware implementation of a self-organizing map algorithm based on axon m...
In mammalian visual cortex, neurons are organized according to their functional properties into mult...
Obermayer K, Ritter H, Schulten K. Development and Spatial Structure of Cortical Feature Maps: A Mod...
This paper presents a novel self-organising neural network. It has been developed for use as a simpl...
This paper presents a novel self-organising neural network. It has been developed for use as a simpl...
The human ventral visual stream has a highly systematic organization of object information, but the ...
Inferotemporal (IT) cortex in humans and other primates is topographically organized, containing mul...
A computational model of a self-structuring neuronal net is presented in which repetitively applied ...
This paper presents an algorithm to form a topographic map resembling to the self-organizing map. Th...
We investigate a self-organizing network model to account for the computational property of the infe...