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  4. Predicting the imagined contents using brain activation
 
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Predicting the imagined contents using brain activation

Source
2013 4th National Conference on Computer Vision Pattern Recognition Image Processing and Graphics Ncvpripg 2013
Date Issued
2013-01-01
Author(s)
Miyapuram, Krishna Prasad  
Schultz, Wolfram
Tobler, Philippe N.
DOI
10.1109/NCVPRIPG.2013.6776230
Abstract
Mental imagery refers to percept-like experiences in the absence of sensory input. Brain imaging studies suggest common, modality-specific, neural correlates imagery and perception. We associated abstract visual stimuli with either visually presented or imagined monetary rewards and scrambled pictures. Brain images for a group of 12 participants were collected using functional magnetic resonance imaging. Statistical analysis showed that human midbrain regions were activated irrespective of the monetary rewards being imagined or visually present. A support vector machine trained on the midbrain activation patterns to the visually presented rewards predicted with 75% accuracy whether the participants imagined the monetary reward or the scrambled picture during imagination trials. Training samples were drawn from visually presented trials and classification accuracy was assessed for imagination trials. These results suggest the use of machine learning technique for classification of underlying cognitive states from brain imaging data. © 2013 IEEE.
Unpaywall
URI
https://d8.irins.org/handle/IITG2025/21340
Subjects
brain imaging | brain reading | machine learning | mental imagery | support vector machine
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