Android-Based Application for Real-Time Indonesian Sign Language Recognition Using Convolutional Neural Network

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS TEM Journal-Technology Education Management Informatics Pub Date : 2023-08-28 DOI:10.18421/tem123-35
Raymond Sutjiadi
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Abstract

Individuals with hearing or speech impairments face challenges in communicating with others, requiring special techniques to express their thoughts and feelings. Sign language is an alternative way to communicate using a specific pattern of hand gestures to deliver messages instead of verbal speaking (oral communication). Unfortunately, most people do not know how to use and read sign language. Because of its complexity and many types of sign language worldwide, only well-trained personnel could use it as a communication medium. This research provides a solution in the form of a machine-learning Android-based application designed to recognize sign language captured by a smartphone camera and translate it into Latin characters. The recognition accommodates Convolutional Neural Network (CNN), one of the popular deep learning algorithms. This application recognizes 26 characters of Indonesian Sign Language (Bahasa Isyarat Indonesia/BISINDO) alphabets using MobileNetV3 architecture. To build the data model, dataset images were collected from 5 different models demonstrating 26 BISINDO characters in various lighting, background, and hand gesture position. These dataset images were also generated using image augmentation process to achieve the randomness by adjusting the image rotation, noise, and brightness. Based on the testing result using 6,240 dataset images, the application has 75.38% accuracy in recognizing Indonesian Sign Language alphabets.
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基于Android的卷积神经网络印尼手语实时识别应用
有听力或言语障碍的人在与他人沟通时面临挑战,需要特殊的技巧来表达他们的想法和感受。手语是一种使用特定手势传递信息的替代沟通方式,而不是口头交流。不幸的是,大多数人不知道如何使用和阅读手语。由于其复杂性和世界范围内多种手语,只有训练有素的人员才能将其用作交流媒介。这项研究以基于Android的机器学习应用程序的形式提供了一个解决方案,该应用程序旨在识别智能手机摄像头捕捉到的手语,并将其翻译成拉丁字符。该识别包含卷积神经网络(CNN),这是一种流行的深度学习算法。此应用程序使用MobileNetV3架构识别26个印度尼西亚手语(Bahasa Isyarat Indonesia/BISINDO)字母表字符。为了建立数据模型,从5个不同的模型中收集了数据集图像,展示了不同照明、背景和手势位置下的26个BISINDO角色。这些数据集图像也是使用图像增强过程生成的,通过调整图像旋转、噪声和亮度来实现随机性。基于使用6240个数据集图像的测试结果,该应用程序识别印尼手语字母的准确率为75.38%。
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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来源期刊
TEM Journal-Technology Education Management Informatics
TEM Journal-Technology Education Management Informatics COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
2.20
自引率
14.30%
发文量
176
审稿时长
8 weeks
期刊介绍: TEM JOURNAL - Technology, Education, Management, Informatics Is a an Open Access, Double-blind peer reviewed journal that publishes articles of interdisciplinary sciences: • Technology, • Computer and informatics sciences, • Education, • Management
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