From grid cells and visual place cells to multimodal place cell: a new robotic architecture
In the present study, a new architecture for the generation of grid cells (GC) was implemented on a real robot. In order to test this model a simple place cell (PC) model merging visual PC activity and grid cell was developed. Grid cells were first built from a simple several to one projection (sim...
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Frontiers Media S.A.
2015-04-01
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doaj-e4b23d97b7664121b00da53063d949862020-11-24T22:59:59ZengFrontiers Media S.A.Frontiers in Neurorobotics1662-52182015-04-01910.3389/fnbot.2015.0000192024From grid cells and visual place cells to multimodal place cell: a new robotic architectureAdrien eJauffret0Nicolas eCuperlier1Philippe eGaussier2Cergy-Pontoise UniversityCergy-Pontoise UniversityCergy-Pontoise UniversityIn the present study, a new architecture for the generation of grid cells (GC) was implemented on a real robot. In order to test this model a simple place cell (PC) model merging visual PC activity and grid cell was developed. Grid cells were first built from a simple several to one projection (similar to a modulo operation) performed on a neural field coding for path integration (PI). Robotics experiments raised several practical and theoretical issues. To limit the important angular drift of path integration, head direction information was introduced in addition to the robot proprioceptive signal coming from the wheel rotation. Next, a simple associative learning between visual place cells and the neural field coding for the PI has been used to recalibrate the PI and to limit its drift. Finally, the parameters controlling the shape of the PC built from the grid cells have been studied. Increasing the number of GC obviously improves the shape of the resulting place field. Yet, other parameters such as the discretization factor of PI or the lateral interactions between GC can have an important impact on the place field quality and avoid the need of a very large number of GC. In conclusion, our results show our GC model based on the compression of path integration is congruent with neurobiological studies made on rodent. GC firing patterns can be the result of a modulo transformation of path integration information. We argue that such a transformation may be a general property of the connectivity from the cortex to the entorhinal cortex. Our model predicts that the effect of similar transformations on other kinds of sensory information (visual, tactile, auditory, etc...) in the entorhinal cortex should be observed. Consequently, a given EC cell should react to non-contiguous input configurations in non spatial conditions according to the projection from its different inputs.http://journal.frontiersin.org/Journal/10.3389/fnbot.2015.00001/fullEntorhinal CortexHippocampusRoboticsgrid cellsmultimodal integrationPlace Cells |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Adrien eJauffret Nicolas eCuperlier Philippe eGaussier |
spellingShingle |
Adrien eJauffret Nicolas eCuperlier Philippe eGaussier From grid cells and visual place cells to multimodal place cell: a new robotic architecture Frontiers in Neurorobotics Entorhinal Cortex Hippocampus Robotics grid cells multimodal integration Place Cells |
author_facet |
Adrien eJauffret Nicolas eCuperlier Philippe eGaussier |
author_sort |
Adrien eJauffret |
title |
From grid cells and visual place cells to multimodal place cell: a new robotic architecture |
title_short |
From grid cells and visual place cells to multimodal place cell: a new robotic architecture |
title_full |
From grid cells and visual place cells to multimodal place cell: a new robotic architecture |
title_fullStr |
From grid cells and visual place cells to multimodal place cell: a new robotic architecture |
title_full_unstemmed |
From grid cells and visual place cells to multimodal place cell: a new robotic architecture |
title_sort |
from grid cells and visual place cells to multimodal place cell: a new robotic architecture |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neurorobotics |
issn |
1662-5218 |
publishDate |
2015-04-01 |
description |
In the present study, a new architecture for the generation of grid cells (GC) was implemented on a real robot. In order to test this model a simple place cell (PC) model merging visual PC activity and grid cell was developed. Grid cells were first built from a simple several to one projection (similar to a modulo operation) performed on a neural field coding for path integration (PI). Robotics experiments raised several practical and theoretical issues. To limit the important angular drift of path integration, head direction information was introduced in addition to the robot proprioceptive signal coming from the wheel rotation. Next, a simple associative learning between visual place cells and the neural field coding for the PI has been used to recalibrate the PI and to limit its drift. Finally, the parameters controlling the shape of the PC built from the grid cells have been studied. Increasing the number of GC obviously improves the shape of the resulting place field. Yet, other parameters such as the discretization factor of PI or the lateral interactions between GC can have an important impact on the place field quality and avoid the need of a very large number of GC. In conclusion, our results show our GC model based on the compression of path integration is congruent with neurobiological studies made on rodent. GC firing patterns can be the result of a modulo transformation of path integration information. We argue that such a transformation may be a general property of the connectivity from the cortex to the entorhinal cortex. Our model predicts that the effect of similar transformations on other kinds of sensory information (visual, tactile, auditory, etc...) in the entorhinal cortex should be observed. Consequently, a given EC cell should react to non-contiguous input configurations in non spatial conditions according to the projection from its different inputs. |
topic |
Entorhinal Cortex Hippocampus Robotics grid cells multimodal integration Place Cells |
url |
http://journal.frontiersin.org/Journal/10.3389/fnbot.2015.00001/full |
work_keys_str_mv |
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