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A Weighted Deep Ensemble for Indian Sign Language Recognition

Rinki Gupta, Ananya Shekhar Bhatnagar, Ghanapriya Singh

2023IETE Journal of Research12 citationsDOI

Abstract

This work concentrates on developing an Indian sign language (ISL) recognition system using a forearm-worn wearable device to assist hearing-impaired persons. A novel ensemble of convolution neural networks (CNN) is proposed for robust ISL recognition using multi-sensor data. The accuracy for classification of 50 ISL signs improved from 92.5% obtained using a single CNN to 94.2% with 10 ensemble members created using the bagging approach and soft-voting for decision aggregation. Then, the ensemble of CNNs was optimized using weighted voting, where the weights were determined using a differential evolution algorithm. This further improved the classification accuracy to 96.6% with 10 ensemble members.

Topics & Concepts

Computer scienceArtificial intelligencePattern recognition (psychology)Ensemble learningSign (mathematics)Convolutional neural networkSign languageVotingWeighted votingMajority ruleSpeech recognitionConvolution (computer science)Wearable computerArtificial neural networkMathematicsPolitical scienceEmbedded systemLawPoliticsMathematical analysisLinguisticsPhilosophyHand Gesture Recognition SystemsGait Recognition and AnalysisTactile and Sensory Interactions
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