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ML Based Sign Language Recognition System

70 Citations•2021•
K. Amrutha, P. Prabu
2021 International Conference on Innovative Trends in Information Technology (ICITIIT)

Assessment of ML-based SLR model was conducted with the help of 4 candidates under a controlled environment, and the model yielded 65% accuracy.

Abstract

This paper reviews different steps in an automated sign language recognition (SLR) system. Developing a system that can read and interpret a sign must be trained using a large dataset and the best algorithm. As a basic SLR system, an isolated recognition model is developed. The model is based on vision-based isolated hand gesture detection and recognition. Assessment of ML-based SLR model was conducted with the help of 4 candidates under a controlled environment. The model made use of a convex hull for feature extraction and KNN for classification. The model yielded 65% accuracy.