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Hand Shape Classification using Contour Distribution

Changmin Lee, DaeEun Kim

Year
2014
Citations
2
Access
Open access

Abstract

Hand gesture recognition based on vision is a challenging task in human-robot interaction. The sign language of finger spelling alphabets has been tested as a kind of hand gesture. In this paper, we test hand gesture recognition by detecting the contour shape and orientation of hand with visual image. The method has three stages, the first stage of finding hand component separated from the background image, the second stage of extracting the contour feature over the hand component and the last stage of comparing the feature with the reference features in the database. Here, finger spelling alphabets are used to verify the performance of our system and our method shows good performance to discriminate finger alphabets.

Keywords

Artificial intelligenceComputer scienceGestureGesture recognitionFeature (linguistics)Orientation (vector space)Pattern recognition (psychology)Computer visionSign languageComponent (thermodynamics)

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