Real-Time Recognition of Bangla Sign Language Characters: A Computer Vision Based Approach Using Convolutional Neural Network

Mahib Tanvir, M. Alam, Dipanwita Saha, Shahid A. Hasib, S. Islam
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引用次数: 2

Abstract

Sign Language is the elementary communication media for Deaf & Mute (D&M) people. On the other hand, it seems too tenacious for the general people to understand this language. In order to tear out this communication barrier, a real-time automated translator is essential. Through this research, a computer vision-based approach has been developed for the recognition of Bangla Sign Language (BdSL) characters. In this work, a deep learning-based recognition model has been developed. Adaptive thresholding has been integrated with 2D Convolutional Neural Network (CNN) to construct this model. Proposed model has been trained to build this real-time automated translator through our own created dataset (dataset containing 3600 different images for 36 distinct characters). The proposed model has been trained and tested with 2880 (80%) training images and 720 (20%) testing images respectively. Thirty-six unique characters of Bangla Sign Language can be recognized through this model with significant accuracy. The model delivers validation accuracy of 99.72% and validation loss of 0.73%. A significant result has been achieved for the recognition and translation of Bangla Sign Language characters with this dataset over other existing Bangla Sign Language Recognition model.
基于卷积神经网络的孟加拉语手语字符实时识别方法
手语是聋哑人的基本交流媒介。另一方面,对于一般人来说,这种语言似乎太顽固了。为了消除这种沟通障碍,实时自动翻译是必不可少的。通过本研究,开发了一种基于计算机视觉的孟加拉手语字符识别方法。在这项工作中,开发了一个基于深度学习的识别模型。将自适应阈值法与二维卷积神经网络(CNN)相结合来构建该模型。建议的模型已经通过我们自己创建的数据集(数据集包含3600个不同的图像,36个不同的字符)来训练构建这个实时自动翻译。该模型分别用2880张(80%)训练图像和720张(20%)测试图像进行了训练和测试。通过该模型可以识别出36个独特的孟加拉手语字符,且准确率显著。该模型的验证准确率为99.72%,验证损失为0.73%。与现有的孟加拉语手语识别模型相比,该数据集对孟加拉语手语字符的识别和翻译取得了显著的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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