A machine learning approach to predict perceptual decisions: an insight into face pareidolia
Abstract The perception of an external stimulus not only depends upon the characteristics of the stimulus but is also influenced by the ongoing brain activity prior to its presentation. In this work, we directly tested whether spontaneous electrical brain activities in prestimulus period could predi...
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doaj-317164061c334178a6bfa0762654ab932020-11-25T01:19:52ZengSpringerOpenBrain Informatics2198-40182198-40262019-02-016111610.1186/s40708-019-0094-5A machine learning approach to predict perceptual decisions: an insight into face pareidoliaKasturi Barik0Syed Naser Daimi1Rhiannon Jones2Joydeep Bhattacharya3Goutam Saha4Department of Electronics and Electrical Communication Engineering, Indian Institute of TechnologyDepartment of Electronics and Electrical Communication Engineering, Indian Institute of TechnologyDepartment of Psychology, University of WinchesterDepartment of Psychology, Goldsmiths University of LondonDepartment of Electronics and Electrical Communication Engineering, Indian Institute of TechnologyAbstract The perception of an external stimulus not only depends upon the characteristics of the stimulus but is also influenced by the ongoing brain activity prior to its presentation. In this work, we directly tested whether spontaneous electrical brain activities in prestimulus period could predict perceptual outcome in face pareidolia (visualizing face in noise images) on a trial-by-trial basis. Participants were presented with only noise images but with the prior information that some faces would be hidden in these images, while their electrical brain activities were recorded; participants reported their perceptual decision, face or no-face, on each trial. Using differential hemispheric asymmetry features based on large-scale neural oscillations in a machine learning classifier, we demonstrated that prestimulus brain activities could achieve a classification accuracy, discriminating face from no-face perception, of 75% across trials. The time–frequency features representing hemispheric asymmetry yielded the best classification performance, and prestimulus alpha oscillations were found to be mostly involved in predicting perceptual decision. These findings suggest a mechanism of how prior expectations in the prestimulus period may affect post-stimulus decision making.http://link.springer.com/article/10.1186/s40708-019-0094-5EEGPrior expectationFace pareidoliaSingle-trial classificationArtificial neural network |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kasturi Barik Syed Naser Daimi Rhiannon Jones Joydeep Bhattacharya Goutam Saha |
spellingShingle |
Kasturi Barik Syed Naser Daimi Rhiannon Jones Joydeep Bhattacharya Goutam Saha A machine learning approach to predict perceptual decisions: an insight into face pareidolia Brain Informatics EEG Prior expectation Face pareidolia Single-trial classification Artificial neural network |
author_facet |
Kasturi Barik Syed Naser Daimi Rhiannon Jones Joydeep Bhattacharya Goutam Saha |
author_sort |
Kasturi Barik |
title |
A machine learning approach to predict perceptual decisions: an insight into face pareidolia |
title_short |
A machine learning approach to predict perceptual decisions: an insight into face pareidolia |
title_full |
A machine learning approach to predict perceptual decisions: an insight into face pareidolia |
title_fullStr |
A machine learning approach to predict perceptual decisions: an insight into face pareidolia |
title_full_unstemmed |
A machine learning approach to predict perceptual decisions: an insight into face pareidolia |
title_sort |
machine learning approach to predict perceptual decisions: an insight into face pareidolia |
publisher |
SpringerOpen |
series |
Brain Informatics |
issn |
2198-4018 2198-4026 |
publishDate |
2019-02-01 |
description |
Abstract The perception of an external stimulus not only depends upon the characteristics of the stimulus but is also influenced by the ongoing brain activity prior to its presentation. In this work, we directly tested whether spontaneous electrical brain activities in prestimulus period could predict perceptual outcome in face pareidolia (visualizing face in noise images) on a trial-by-trial basis. Participants were presented with only noise images but with the prior information that some faces would be hidden in these images, while their electrical brain activities were recorded; participants reported their perceptual decision, face or no-face, on each trial. Using differential hemispheric asymmetry features based on large-scale neural oscillations in a machine learning classifier, we demonstrated that prestimulus brain activities could achieve a classification accuracy, discriminating face from no-face perception, of 75% across trials. The time–frequency features representing hemispheric asymmetry yielded the best classification performance, and prestimulus alpha oscillations were found to be mostly involved in predicting perceptual decision. These findings suggest a mechanism of how prior expectations in the prestimulus period may affect post-stimulus decision making. |
topic |
EEG Prior expectation Face pareidolia Single-trial classification Artificial neural network |
url |
http://link.springer.com/article/10.1186/s40708-019-0094-5 |
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