Publication | Closed Access
Hand gesture recognition with leap motion and kinect devices
436
Citations
12
References
2014
Year
Unknown Venue
EngineeringHuman Pose Estimation3D Pose EstimationBiometricsField RoboticsWearable TechnologyImage AnalysisKinesiologyMotion CapturePattern RecognitionLeap Motion DataRobot LearningKinematicsHuman MotionHealth SciencesMachine VisionDanceComputer VisionGesture RecognitionHigh AccuracyEye TrackingLeap MotionHuman-computer InteractionHuman MovementHand Gesture Recognition
The recent introduction of novel acquisition devices like the Leap Motion and the Kinect allows to obtain a very informative description of the hand pose that can be exploited for accurate gesture recognition. This paper proposes a novel hand gesture recognition scheme explicitly targeted to Leap Motion data. An ad-hoc feature set based on the positions and orientation of the fingertips is computed and fed into a multi-class SVM classifier in order to recognize the performed gestures. A set of features is also extracted from the depth computed from the Kinect and combined with the Leap Motion ones in order to improve the recognition performance. Experimental results present a comparison between the accuracy that can be obtained from the two devices on a subset of the American Manual Alphabet and show how, by combining the two features sets, it is possible to achieve a very high accuracy in real-time.
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