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Hand gesture recognition algorithm combining hand-type adaptive algorithm and effective-area ratio for efficient edge computing

Qiang Zhang, Shanlin Xiao, Zhiyi Yu, Huanliang Zheng, Peng Wang

2021Journal of Electronic Imaging12 citationsDOI

Abstract

Most existing gesture recognition algorithms have low recognition rates under rotation, translation, and scaling of hand images as well as different hand types. We propose a new hand gesture recognition algorithm that combines the hand-type adaptive algorithm and effective-area ratio based on feature matching. Samples are divided into several groups according to the subjects’ palm shapes and the algorithm is trained using self-collected data. The user’s hand type is paired with one of the sample libraries by the hand-type adaptive algorithm. To further improve the accuracy, the effective-area ratio of the gesture is calculated based on the minimum bounding rectangle, and the preliminary gesture is recognized by the effective-area ratio feature method. The results of experiments demonstrate that the proposed algorithm could accurately recognize gestures in real time and exhibits good adaptability to different hand types. The overall recognition rate is over 94%. The recognition rate still exceeds 93% when hand gesture images are rotated, translated, or scaled.

Topics & Concepts

Computer scienceGestureGesture recognitionAlgorithmArtificial intelligenceRectangleFeature (linguistics)Computer visionEnhanced Data Rates for GSM EvolutionAdaptabilityPattern recognition (psychology)MathematicsPhilosophyLinguisticsBiologyEcologyGeometryHand Gesture Recognition SystemsGaze Tracking and Assistive TechnologyAdvanced Computing and Algorithms
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