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Hand Gesture Recognition for Sign Language Using 3DCNN

Muneer Al-Hammadi, Ghulam Muhammad, Wadood Abdul, Mansour Alsulaiman, Mohamed A. Bencherif, Mohamed Amine Mekhtiche

2020IEEE Access219 citationsDOIOpen Access PDF

Abstract

Recently, automatic hand gesture recognition has gained increasing importance for two principal reasons: the growth of the deaf and hearing-impaired population, and the development of vision-based applications and touchless control on ubiquitous devices. As hand gesture recognition is at the core of sign language analysis a robust hand gesture recognition system should consider both spatial and temporal features. Unfortunately, finding discriminative spatiotemporal descriptors for a hand gesture sequence is not a trivial task. In this study, we proposed an efficient deep convolutional neural networks approach for hand gesture recognition. The proposed approach employed transfer learning to beat the scarcity of a large labeled hand gesture dataset. We evaluated it using three gesture datasets from color videos: 40, 23, and 10 classes were used from these datasets. The approach obtained recognition rates of 98.12%, 100%, and 76.67% on the three datasets, respectively for the signer-dependent mode. For the signer-independent mode, it obtained recognition rates of 84.38%, 34.9%, and 70% on the three datasets, respectively.

Topics & Concepts

Computer scienceGestureSign languageGesture recognitionArtificial intelligenceSpeech recognitionNatural language processingSign (mathematics)LinguisticsMathematicsPhilosophyMathematical analysisHand Gesture Recognition SystemsHuman Pose and Action RecognitionGait Recognition and Analysis
Hand Gesture Recognition for Sign Language Using 3DCNN | Litcius