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Hand gesture recognition using multivariate fuzzy decision tree and user adaptation

Author(s)
Jeon, Moon-JinLee, Sang WanBien, Zeungnam
Issued Date
2011
DOI
10.4018/ijfsa.2011070102
URI
https://scholarworks.unist.ac.kr/handle/201301/28983
Fulltext
https://www.igi-global.com/gateway/article/55994
Citation
INTERNARIONAL JOURNAL OF FUZZY SYSTEM APPLICATIONS, v.1, no.3, pp.15 - 31
Abstract
As an emerging human-computer interaction (HCI) technology, recognition of human hand gesture is considered a very powerful means for human intention reading. To construct a system with a reliable and robust hand gesture recognition algorithm, it is necessary to resolve several major difficulties of hand gesture recognition, such as inter-person variation, intra-person variation, and false positive error caused by meaningless hand gestures. This paper proposes a learning algorithm and also a classification technique, based on multivariate fuzzy decision tree (MFDT). Efficient control of a fuzzified decision boundary in the MFDT leads to reduction of intra-person variation, while proper selection of a user dependent (UD) recognition model contributes to minimization of inter-person variation. The proposed method is tested first by using two benchmark data sets in UCI Machine Learning Repository and then by a hand gesture data set obtained from 10 people for 15 days. The experimental results show a discernibly enhanced classification performance as well as user adaptation capability of the proposed algorithm.
Publisher
IGI Global
ISSN
2156-177X
Keyword (Author)
Hand Gesture RecognitionLearning AlgorithmModel SelectionMultivariate Fuzzy Decision TreeUser Adaptation

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