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Robust hand gesture recognition using multiple shape-oriented visual cues

Samy Bakheet, Ayoub Al-Hamadi

2021EURASIP Journal on Image and Video Processing24 citationsDOIOpen Access PDF

Abstract

Abstract Robust vision-based hand pose estimation is highly sought but still remains a challenging task, due to its inherent difficulty partially caused by self-occlusion among hand fingers. In this paper, an innovative framework for real-time static hand gesture recognition is introduced, based on an optimized shape representation build from multiple shape cues. The framework incorporates a specific module for hand pose estimation based on depth map data, where the hand silhouette is first extracted from the extremely detailed and accurate depth map captured by a time-of-flight (ToF) depth sensor. A hybrid multi-modal descriptor that integrates multiple affine-invariant boundary-based and region-based features is created from the hand silhouette to obtain a reliable and representative description of individual gestures. Finally, an ensemble of one-vs.-all support vector machines (SVMs) is independently trained on each of these learned feature representations to perform gesture classification. When evaluated on a publicly available dataset incorporating a relatively large and diverse collection of egocentric hand gestures, the approach yields encouraging results that agree very favorably with those reported in the literature, while maintaining real-time operation.

Topics & Concepts

GestureArtificial intelligenceComputer scienceSilhouetteComputer visionGesture recognitionPattern recognition (psychology)BiometricsRobustness (evolution)Invariant (physics)Support vector machinePoseRepresentation (politics)MathematicsPolitical sciencePoliticsChemistryMathematical physicsLawBiochemistryGeneHand Gesture Recognition SystemsHuman Pose and Action RecognitionRobot Manipulation and Learning
Robust hand gesture recognition using multiple shape-oriented visual cues | Litcius