Volume 3, Issue 1, 2023
Articles

Study on Advancing Cognitive Neuroscience: Brain Fingerprinting for Enhanced Neurological Research

Rishita sri kotapati
Department of Computer Science and Engineering , Alliance University Bangalore

Published 2023-12-31

Keywords

  • P300-MERMER, EEG, perpetrator, brain wave patterns, cognitive, indeterminate, data identification.

How to Cite

sri kotapati, R. . (2023). Study on Advancing Cognitive Neuroscience: Brain Fingerprinting for Enhanced Neurological Research. Kristu Jayanti Journal of Computational Sciences (KJCS), 3(1), 38–43. https://doi.org/10.59176/kjcs.v3i1.2311

Abstract

Brain fingerprinting is an advanced technique for positively and scientifically identifying criminals by analysing brain wave reactions to crime-related words or images displayed on a computer screen. The theory behind brain fingerprinting technology is that when people experience certain events, their brains generate unique brain wave patterns [10]. P300MERMER EEG event-related potential elicited by stimuli relevant to the current situation [14]. P300-MARMER answers to terms or visuals related to crime scene, terrorist instruction, bomb making experience, etc. Determined by BF. BF's cognitive information processing was assessed for data identification [5]. There is no lie, tension or emotion that BF can reveal. The level of statistical confidence is determined by BF if there is data or the lack of it for each individual opinion. There are no false positives or negatives in laboratory or field tests conducted by the FBI, CIA, US Navy and other agencies. All the results obtained were even correct. Only 3% of findings are considered "indeterminate". The use of BF has been authorized in criminal proceedings. The new method uses brain waves to determine whether a test taker can recall the specifics of an event. Even if the subject deliberately withholds the necessary information, the brain wave transmitter will pick it up.

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