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MediSign: An Attention-Based CNN-BiLSTM Approach of Classifying Word Level Signs for Patient-Doctor Interaction in Hearing Impaired Community

Md. Amimul Ihsan, Abrar Faiaz Eram, Lutfun Nahar, Muhammad Abdul Kadir

2024IEEE Access18 citationsDOIOpen Access PDF

Abstract

Along with day-to-day communication, receiving medical care is quite challenging for the deaf and mute population, especially in developing countries where medical facilities are not as modernized as in the West. A word-level sign language interpretation system that is aimed toward detecting medically relevant signs can allow smooth communication between doctors and deaf patients, ensuring seamless medical care. To that end, a dataset from twenty distinct signers of diverse backgrounds performing 30 frequently used words in patient-doctor interaction was created. The proposed system has been built employing MobileNetV2 in conjunction with an attention-based Bidirectional LSTM network to achieve robust classification, where the validation accuracy and f1- scores were 95.83% and 93%, respectively. Notably, the accuracy of the proposed model surpasses the recent word-level sign language classification method in a medical context by 5%. Furthermore, the comparison of evaluation metrics with contemporary word-level sign language recognition models in American, Arabic, and German Sign Language further affirmed the capability of the proposed architecture.

Topics & Concepts

Computer scienceSign languageContext (archaeology)ArabicWord (group theory)Sign (mathematics)Natural language processingArtificial intelligenceSpeech recognitionLinguisticsMathematicsPhilosophyBiologyPaleontologyMathematical analysisHand Gesture Recognition SystemsHearing Impairment and CommunicationGait Recognition and Analysis
MediSign: An Attention-Based CNN-BiLSTM Approach of Classifying Word Level Signs for Patient-Doctor Interaction in Hearing Impaired Community | Litcius