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김태환

Kim, Taehwan
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Fingerspelling recognition with semi-markov conditional random fields

Author(s)
Kim, TaehwanShakhnarovich, GregLivescu, Karen
Issued Date
2013-12
DOI
10.1109/ICCV.2013.192
URI
https://scholarworks.unist.ac.kr/handle/201301/53840
Citation
IEEE International Conference on Computer Vision, pp.1521 - 1528
Abstract
Recognition of gesture sequences is in general a very difficult problem, but in certain domains the difficulty may be mitigated by exploiting the domain's grammar. One such grammatically constrained gesture sequence domain is sign language. In this paper we investigate the case of finger spelling recognition, which can be very challenging due to the quick, small motions of the fingers. Most prior work on this task has assumed a closed vocabulary of finger spelled words, here we study the more natural open-vocabulary case, where the only domain knowledge is the possible finger spelled letters and statistics of their sequences. We develop a semi-Markov conditional model approach, where feature functions are defined over segments of video and their corresponding letter labels. We use classifiers of letters and linguistic hand shape features, along with expected motion profiles, to define segmental feature functions. This approach improves letter error rate (Levenshtein distance between hypothesized and correct letter sequences) from 16.3% using a hidden Markov model baseline to 11.6% using the proposed semi-Markov model.
Publisher
Institute of Electrical and Electronics Engineers Inc.

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