Recognition of Meaningful Human Actions for Video Annotation Using EEG Based User Responses

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To provide interesting videos, it is important to generate relevant tags and annotations that describe the whole video or its segment efficiently. Because generating annotations and tags is a time-consuming process, it is essential for analyzing videos without human intervention. Although there have been many studies of implicit human-centered tagging using bio-signals, most of them focus on affective tagging and tag relevance assessment. This paper proposes binary and unary classification models that recognize actions meaningful to users in videos, for example jumps in the figure skating program, using EEG features of band power (BP) values and asymmetry scores (AS). As a result, the binary and binary classification models achieved the best balanced accuracies of 52.86% and 50.06% respectively. The binary classification models showed high specificity on non-jump actions and the unary classification models showed high sensitivity on jump actions.
Publisher
International Conference on MultiMedia Modeling
Issue Date
2015-01
Language
English
Citation

21st International Conference, MMM 2015, pp.447 - 457

DOI
10.1007/978-3-319-14442-9_50
URI
http://hdl.handle.net/10203/200522
Appears in Collection
IE-Conference Papers(학술회의논문)
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