Towards smart glasses for facial expression recognition using OMG and machine learning

被引:0
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作者
Ivana Kiprijanovska
Simon Stankoski
M. John Broulidakis
James Archer
Mohsen Fatoorechi
Martin Gjoreski
Charles Nduka
Hristijan Gjoreski
机构
[1] Emteq Ltd.,Faculty of Informatics
[2] Università della Svizzera Italiana,Faculty of Electrical Engineering and Information Technologies
[3] Ss. Cyril and Methodius University in Skopje,undefined
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摘要
This study aimed to evaluate the use of novel optomyography (OMG) based smart glasses, OCOsense, for the monitoring and recognition of facial expressions. Experiments were conducted on data gathered from 27 young adult participants, who performed facial expressions varying in intensity, duration, and head movement. The facial expressions included smiling, frowning, raising the eyebrows, and squeezing the eyes. The statistical analysis demonstrated that: (i) OCO sensors based on the principles of OMG can capture distinct variations in cheek and brow movements with a high degree of accuracy and specificity; (ii) Head movement does not have a significant impact on how well these facial expressions are detected. The collected data were also used to train a machine learning model to recognise the four facial expressions and when the face enters a neutral state. We evaluated this model in conditions intended to simulate real-world use, including variations in expression intensity, head movement and glasses position relative to the face. The model demonstrated an overall accuracy of 93% (0.90 f1-score)—evaluated using a leave-one-subject-out cross-validation technique.
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