Abstract:
Experimentation and analysis in brain-computer interface (BCI) has increasingly been
receiving quite some consideration as a substitute communication possibility for patients who are
severely paralyzed in the last few years. To measure brain activities using optical signals a fairly
new and non-invasive brain imaging tool can be put to test know as Functional near-infrared
spectroscopy (fNIRS). Comparability low cost, safety, portability and wear ability are some of the
main advantages of imaging of brain using this non-invasive modality. We have applied this
relatively new non-invasive fNIRS technique to make an image of brain activities during four
different mental tasks. These tasks include Mental Arithmetic (MA), Motor Imagery (i.e. LeftHand and Right-Hand Motor Imagery) and Rest. fNIRS data used is an open access dataset of 29
individuals which was collected by Continuous-wave imaging system (NIR Scout NIRx GmbH,
Berlin, Germany) with the sampling frequency of 10 Hz. In this research Data synchronization is
performed before the data is preprocessed. Usual preprocessing is done using Butterworth filter of
4
th order to minimize or eliminate any unwanted signal distortion. After that an extensive signal
analysis is done in which Six different statistical features (Signal Mean (SM), Skewness (SK),
Kurtosis (KR), Standard Deviation (SD), Signal Peak (SP), and Signal Variance (SV)) are obtained
in the time domain and 13 MFCC (Mel Frequency Cepstral Coefficients) features are obtained
from the frequency domain. After the preprocessing and signal analysis of data our results shows
hemodynamic behavior of multiple patterns during the tasks performed. These unique patterns of
hemodynamic behavior can be used to differentiate and distinguish different task. Separate
Classification analysis is performed on each domain features. We were able to compare,
differentiate and distinguish the brain signal activities captured while performing 4 different tasks
using 3 different classifiers i.e. Linear Discriminant Analysis (LDA), Support Vector Machine
(SVM) and K Nearest Neighbor (KNN). The average classification accuracy of above 90% is
achieved from K Nearest Neighbors (KNN) using the time domain features and same accuracy is
achieved from Support Vector Machine (SVM) using the frequency domain features.