DocumentCode
3576128
Title
Recognition of EOG based reading task using AR features
Author
D´Souza, Sandra ; Natarajan, Sriraam
Author_Institution
SCSVMV, Kanchipuram, India
fYear
2014
Firstpage
113
Lastpage
117
Abstract
Eye movements play an important role in evaluating the process of reading. By visual inspection of the eye movements, it is possible to differentiate the reading process of different persons. The eye movements can be considered as objective tools for understanding the reading process. However, most of the eye movements are involuntary and out of our conscious control. Hence the reading process is better understood when the analysis of eye movements is automated. This research work presents a pilot study conducted in process of automating eye movement analysis to get an insight into the reading process. Electrooculogram (EOG) has been used for recording the eye movements from a group of 40 volunteers. Several autoregressive (AR) features based on Yule walker´s method, Burg´s method, modified covariance method and Linear Predictor Coefficients obtained using Levinson-Durbin recursion methods have been extracted from the raw EOG. The horizontal and vertical modes were then recognized by employing a recurrent Elman neural network. Simulation results show a classification accuracy of 99.95% which indicates the suitability of proposed scheme for human-computer interface applications.
Keywords
autoregressive processes; covariance analysis; electro-oculography; feature extraction; gaze tracking; human computer interaction; medical image processing; recurrent neural nets; Burg´s method; EOG; Levinson-Durbin recursion methods; Yule walker´s method; autoregressive features; electrooculogram; eye movement analysis; human-computer interface applications; linear predictor coefficients; modified covariance method; reading process; recurrent Elman neural network; visual inspection; Accuracy; Computational modeling; Data models; Electric potential; Electrodes; Electrooculography; Feature extraction; EOG; Elman network; autoregressive features; feature extraction;
fLanguage
English
Publisher
ieee
Conference_Titel
Circuits, Communication, Control and Computing (I4C), 2014 International Conference on
Print_ISBN
978-1-4799-6545-8
Type
conf
DOI
10.1109/CIMCA.2014.7057770
Filename
7057770
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