Acquisition and Analysis of EEG Data for Forensic Application
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Abstract
Countries throughout the world are increasingly spending on scientific research and technology to
improve its security personnel to protect their borders and citizens from any form of illegal
activities. The goal of this study was to collect and analyse EEG data for the forensic application
of hidden information recognition in the human brain. First of all, a new mock crime protocol was
drafted, derived from which, pictorial (images) and auditory (sounds) stimuli were prepared for
introduction to all the participants. EEG waveforms of 35 participants were recorded.
Following that, features derived from time, frequency, wavelet, and empirical mode decomposition
(EMD) were evaluated. Using the ReliefF ranking technique, the top three ranked pictorial and top
seven ranked auditory features were produced. On transient waveforms such as EEG, EMD has a
high data-adaptive ability. The first contribution of this work was the analysis of EMD-derived
features in this EEG data-based concealed details identification investigation.
The features were segregated into the two output categories (guilty and innocent) using different
classifiers namely artificial neural network (ANN), support vector machine (SVM) (radial basis
function (RBF) kernel), SVM (polynomial kernel), and k-nearest neighbor (KNN), utilizing tenfold
cross-validation. The proposed group of seven auditory features using SVM (RBF kernel)
identified the concealed details with a sensitivity value of 100%, specificity value of 87.50%, and
largest classification accuracy value of 92.86%, utilizing a single EEG channel (Pz). The second
contribution of this research was the creation of a computer-based hidden details recognition
method using single EEG channel (Pz) data.
Also, the performance of the proposed approach of detecting hidden information was assessed on
EEG dataset of Gao et al. (2013) related to lie recognition. The third contribution of this work was
for the dataset of Gao et al. (2013), 40 features (6 time, 3 frequency, 10 wavelets, 18 EMD, and 3
correlation coefficients) in combination with SVM (RBF kernel) classification model, performed
better (mean testing accuracy value of 98.80%) than the outcome (mean testing accuracy value of
95.74%) of Gao et al. (2013). The results obtained can be helpful in the recognition of concealed
information in the human brain through EEG signals for practical field situations.
