LGSPMLApr 30, 2019

Eigen Values Features for the Classification of Brain Signals corresponding to 2D and 3D Educational Contents

arXiv:1904.13221v1
Originality Synthesis-oriented
AI Analysis

This addresses the question of whether 3D multimedia enhances educational outcomes compared to 2D, but the results are incremental as they show no difference.

The paper tackled the problem of classifying brain signals to compare the impact of 2D versus 3D educational content on learning and memory, finding no significant difference between them in short-term and long-term memory tests with excellent classification accuracies.

In this paper, we have proposed a brain signal classification method, which uses eigenvalues of the covariance matrix as features to classify images (topomaps) created from the brain signals. The signals are recorded during the answering of 2D and 3D questions. The system is used to classify the correct and incorrect answers for both 2D and 3D questions. Using the classification technique, the impacts of 2D and 3D multimedia educational contents on learning, memory retention and recall will be compared. The subjects learn similar 2D and 3D educational contents. Afterwards, subjects are asked 20 multiple-choice questions (MCQs) associated with the contents after thirty minutes (Short-Term Memory) and two months (Long-Term Memory). Eigenvalues features extracted from topomaps images are given to K-Nearest Neighbor (KNN) and Support Vector Machine (SVM) classifiers, in order to identify the states of the brain related to incorrect and correct answers. Excellent accuracies obtained by both classifiers and by applying statistical analysis on the results, no significant difference is indicated between 2D and 3D multimedia educational contents on learning, memory retention and recall in both STM and LTM.

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