Encoding Longer-Term Contextual Information with Predictive Coding and Ego-Motion

Studies suggest that, within the hierarchical architecture, the topological higher level possibly represents the scenarios of the current sensory events with slower changing activities. They attempt to predict the neural activities on the lower level by relaying the predicted information after the s...

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Main Authors: Junpei Zhong, Angelo Cangelosi, Tetsuya Ogata, Xinzheng Zhang
Format: Article
Language:English
Published: Hindawi-Wiley 2018-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2018/7609587
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spelling doaj-666de92d7f164cefb107373b74564dfd2020-11-24T21:50:58ZengHindawi-WileyComplexity1076-27871099-05262018-01-01201810.1155/2018/76095877609587Encoding Longer-Term Contextual Information with Predictive Coding and Ego-MotionJunpei Zhong0Angelo Cangelosi1Tetsuya Ogata2Xinzheng Zhang3National Institute of Advanced Industrial Science and Technology (AIST), JapanPlymouth University, UKNational Institute of Advanced Industrial Science and Technology (AIST), JapanJinan University, ChinaStudies suggest that, within the hierarchical architecture, the topological higher level possibly represents the scenarios of the current sensory events with slower changing activities. They attempt to predict the neural activities on the lower level by relaying the predicted information after the scenario of the sensorimotor event has been determined. On the other hand, the incoming sensory information corrects such prediction of the events on the higher level by the fast-changing novel or surprising signal. From this point, we propose a predictive hierarchical artificial neural network model that examines this hypothesis on neurorobotic platforms. It integrates the perception and action in the predictive coding framework. Moreover, in this neural network model, there are different temporal scales of predictions existing on different levels of the hierarchical predictive coding architecture, which defines the temporal memories in recording the events occurring. Also, both the fast- and the slow-changing neural activities are modulated by the motor action. Therefore, the slow-changing neurons can be regarded as the representation of the recent scenario which the sensorimotor system has encountered. The neurorobotic experiments based on the architecture were also conducted.http://dx.doi.org/10.1155/2018/7609587
collection DOAJ
language English
format Article
sources DOAJ
author Junpei Zhong
Angelo Cangelosi
Tetsuya Ogata
Xinzheng Zhang
spellingShingle Junpei Zhong
Angelo Cangelosi
Tetsuya Ogata
Xinzheng Zhang
Encoding Longer-Term Contextual Information with Predictive Coding and Ego-Motion
Complexity
author_facet Junpei Zhong
Angelo Cangelosi
Tetsuya Ogata
Xinzheng Zhang
author_sort Junpei Zhong
title Encoding Longer-Term Contextual Information with Predictive Coding and Ego-Motion
title_short Encoding Longer-Term Contextual Information with Predictive Coding and Ego-Motion
title_full Encoding Longer-Term Contextual Information with Predictive Coding and Ego-Motion
title_fullStr Encoding Longer-Term Contextual Information with Predictive Coding and Ego-Motion
title_full_unstemmed Encoding Longer-Term Contextual Information with Predictive Coding and Ego-Motion
title_sort encoding longer-term contextual information with predictive coding and ego-motion
publisher Hindawi-Wiley
series Complexity
issn 1076-2787
1099-0526
publishDate 2018-01-01
description Studies suggest that, within the hierarchical architecture, the topological higher level possibly represents the scenarios of the current sensory events with slower changing activities. They attempt to predict the neural activities on the lower level by relaying the predicted information after the scenario of the sensorimotor event has been determined. On the other hand, the incoming sensory information corrects such prediction of the events on the higher level by the fast-changing novel or surprising signal. From this point, we propose a predictive hierarchical artificial neural network model that examines this hypothesis on neurorobotic platforms. It integrates the perception and action in the predictive coding framework. Moreover, in this neural network model, there are different temporal scales of predictions existing on different levels of the hierarchical predictive coding architecture, which defines the temporal memories in recording the events occurring. Also, both the fast- and the slow-changing neural activities are modulated by the motor action. Therefore, the slow-changing neurons can be regarded as the representation of the recent scenario which the sensorimotor system has encountered. The neurorobotic experiments based on the architecture were also conducted.
url http://dx.doi.org/10.1155/2018/7609587
work_keys_str_mv AT junpeizhong encodinglongertermcontextualinformationwithpredictivecodingandegomotion
AT angelocangelosi encodinglongertermcontextualinformationwithpredictivecodingandegomotion
AT tetsuyaogata encodinglongertermcontextualinformationwithpredictivecodingandegomotion
AT xinzhengzhang encodinglongertermcontextualinformationwithpredictivecodingandegomotion
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