dc.description.abstract |
Human immune system is characterized as a group of cells, molecules and organs
which is capable of performing several tasks, like pattern recognition, learning from stored
data in memory, detection of diseases and optimize response against diseases. Development of
immunological principles inspired computational techniques are being taken up by the
researchers. These techniques are being used to solve engineering problems in the field of
artificial intelligence. Extensive research has been undertaken to develop and derive algorithms
which are inspired by human immune system. These algorithms use computationally
intelligent techniques to model the human system and are known as Artificial Immune Systems
(AIS). This research focusses on development of a classification system based on Negative
Selection Algorithm (NSA) which uses non-invasive brain electroencephalogram (EEG)
recorded with the help of electrodes placed on brain motor cortex. Multi-domain features, time
domain and frequency domain, were considered to ascertain the classification accuracy. Mel
frequency cepstral coefficients (MFCC) are commonly used as features for audio signal and
speech identification. In this research use of MFCC for EEG signal classification demonstrated
the highest classification accuracy and selected as the best feature for EEG signals under
consideration. Dimensionality reduction is an important aspect of data preprocessing for
improving the computational complexity. Stacked auto-encoder, with two pre-trained hidden
layers, has been used for EEG data dimensionality reduction. The multivariate motor imagery
EEG signals have been classified by set of detectors (artificial lymphocytes) which are trained
and optimized using Genetic Algorithm (GA). The underlying rule for training is the negative
selection algorithm (NSA), which is developed after taking inspiration from human negative selection principle for maturation of lymphocytes inside thymus. These detector sets are
trained and optimized for each class of motor movement for detection of non-self pattern based
on a threshold and detector radius. The radius of detector is optimized using GA such that it
does not mis-classify the sample of EEG signal. Finally, a comprehensive Negative Selection
Classification Algorithm (NSCA) is proposed in this research for classification of brain EEG
signals. The AIS based NSCA exhibits improved performance of multivariate classification as
compared to the recent techniques used by researchers. |
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