Design and Implementation of a Sensor-Based Wearable Glove for Real-Time Sign Language Recognition
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Abstract
This paper presents a real-time sign language conversion using a wearable glove system utilizing multi-sensor data acquisition and machine learning-based gesture classification. The system employs flex sensors to capture finger articulation along with an inertial measurement unit to track hand orientation and real-time movement.” The acquired analog signals are processed and then classified into feature vectors, which are then used for classification of predefined gesture patterns using a trained learning model.
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Gurjar, N. S., Jamadar, A. A., Shaikh, A. I. S., & Karadage, S. S. (2026). Design and Implementation of a Sensor-Based Wearable Glove for Real-Time Sign Language Recognition. International Journal on Advanced Electrical and Computer Engineering, 15(1), 11–16. Retrieved from https://journals.mriindia.com/index.php/ijaece/article/view/3120
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