We investigate a self-organizing network model to account for the computational property of the inferotemporal cortex. The network can learn sparse codes for given data with organizing their topographic mapping. Simulation experiments are performed using real face images composed of different individuals at different viewing directions, and the results show that the network evolves the information representation which is consistent with some physiological findings. By analyzing the characteristics of the neuron activities, it is also demonstrated that the present model self-organizes the efficient representation for coding both of the global structure and the finer information of the face images.
Neocortical regions are organized into columns and layers. Connections between layers run mostly per...
The problem of computing object-based visual representations can be construed as the development of ...
Obermayer K, Ritter H, Schulten K. Development and Spatial Structure of Cortical Feature Maps: A Mod...
Based on recent experimental results on the connectivity and plasticity of the visual cortex, a new ...
A computational model of a self-structuring neuronal net is presented in which repetitively applied ...
Based on recent experimental results on the connectivity and plasticity of the visual cortex, a new ...
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...
Abstract. The authors have proposed a computational model of the cerebral cortex, called the BESOM m...
The spectral structure, the synchronization of cells and the number of degrees of freedom are intima...
Quantitative studies of the connectivity in the superficial layers of visual cortex have revealed a ...
Experimental studies have revealed evidence of both parts-based and holistic representations of obje...
Our brains process information using a layered hierarchical network architecture, with abundant conn...
Response to faces as measured by cell discharge in the temporal cortex of monkeys suggests a sparse ...
<div><p>Experimental studies have revealed evidence of both parts-based and holistic representations...
Neocortical regions are organized into columns and layers. Connections between layers run mostly per...
The problem of computing object-based visual representations can be construed as the development of ...
Obermayer K, Ritter H, Schulten K. Development and Spatial Structure of Cortical Feature Maps: A Mod...
Based on recent experimental results on the connectivity and plasticity of the visual cortex, a new ...
A computational model of a self-structuring neuronal net is presented in which repetitively applied ...
Based on recent experimental results on the connectivity and plasticity of the visual cortex, a new ...
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...
Abstract. The authors have proposed a computational model of the cerebral cortex, called the BESOM m...
The spectral structure, the synchronization of cells and the number of degrees of freedom are intima...
Quantitative studies of the connectivity in the superficial layers of visual cortex have revealed a ...
Experimental studies have revealed evidence of both parts-based and holistic representations of obje...
Our brains process information using a layered hierarchical network architecture, with abundant conn...
Response to faces as measured by cell discharge in the temporal cortex of monkeys suggests a sparse ...
<div><p>Experimental studies have revealed evidence of both parts-based and holistic representations...
Neocortical regions are organized into columns and layers. Connections between layers run mostly per...
The problem of computing object-based visual representations can be construed as the development of ...
Obermayer K, Ritter H, Schulten K. Development and Spatial Structure of Cortical Feature Maps: A Mod...