Real-time Hand Shape Classification Using Scale Invariant Curvature Feature Vector

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Hand shape classification is an important prob-lem for the human computer interaction and the fingerspelling recognition. For this matter, what is needed is a real-time processing and scale invari-ance. To this end, we propose a feature vector for hand shape classification, which is fast, and robust to scale. The proposed method calculates an adap-tive k-curvature which computes a curvature de-pending on hand size. The proposed method works at 0.1sec and has a 99% accuracy.
Publisher
IEEE/IEIE
Issue Date
2016-10-28
Language
English
Citation

The International Conference on Consumer Electronics

URI
http://hdl.handle.net/10203/215425
Appears in Collection
EE-Conference Papers(학술회의논문)
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