Abstract

Sign language is the primary method of communication adopted by deaf and hearing-impaired individuals. The indigenous sign language in Nigeria is one area receiving growing interest, with the major challenge faced is communication between signers and non-signers. Recent advancements in computer vision and deep learning neural networks (DLNN) have led to the exploration of necessary technological concepts towards tackling existing challenges. One area with extensive impact from the use of DLNN is the interpretation of hand signs. This study presents an interpretation system for the indigenous sign language in Nigeria. The methodology comprises three key phases: dataset creation, computer vision techniques, and deep learning model development. A multi-class Convolutional Neural Network (CNN) is designed to train and interpret the indigenous signs in Nigeria. The model is evaluated using a custom-built dataset of some selected indigenous words comprising of 15000 image samples. The experimental outcome shows excellent performance from the interpretation system, with accuracy attaining 95.67%.

Highlights

  • Sign language is the most natural and raw system of languages, which predates the early advent of human evolution

  • We present the development of a computeraided interpretation system for indigenous sign language in Nigeria

  • This paper presents an efficient real-time-based interpretation system for sign language of some indigenous words in Nigeria

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Summary

INTRODUCTION

Sign language is the most natural and raw system of languages, which predates the early advent of human evolution. Sign Language remains an ongoing research study since the arrival of computer vision techniques and has recorded notable progress in the use of several advanced techniques. In recognition of sign language, the process of determining precise figures and shapes still faces some degree of uncertainty This uncertainty can be attributed to several factors, including high clutter, image scale, occlusion, low lighting, and more. Indigenous sign language in Nigeria is the most popular communication approach for individuals with difficulties in speaking. This approach is used to express emotions and communicate efficiently. A new image dataset for some indigenous sign language for some indigenous words in Nigeria was created. The interpretation system was deployed using an interactive graphical user interface to engage users

RELATED WORKS
BACKGROUND
DATA PROCESSING
Data Collection
Preprocessing
Augmentation
Splitting Dataset
Model Design
Model Optimization
Model Training
EXPERIMENT AND RESULT
Evaluation
CONCLUSION
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