A Robot-based Arabic Sign Language Translating System

Dina A. Alabbad, Nouha O. Alsaleh, Naimah A. Alaqeel, Yara A. Alshehri, Nashwa A. Alzahrani, Maha K. Alhobaishi
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引用次数: 3

Abstract

Services provided to deaf people in the Eastern province of Saudi Arabia were evaluated, which confirmed a high need to support the deaf community. This paper proposes utilizing the Pepper robot in the task of recognizing and translating Arabic sign language (ArSL), by which the robot recognizes static hand gestures of the letters in ArSL from each keyframe extracted from the input video and translate it into written text and vice versa. This project aims to conduct a two-way translation of the Arabic sign language in a way that fulfills the communication gap found in Saudi Arabia among deaf and non-deaf people. The methods proposed in this paper are computer vision to use the pepper robot's camera and sensors, Natural language processing to convert natural speech to sign language and Deep learning to build a convolutional neural network model that classifies the sign language gestures and convert them into their corresponding written and spoken form. Moreover, two datasets were used, first one is a collection of hand gestures for training the model and the other one is 39 animated signs of all the Arabic letters and special letters.
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基于机器人的阿拉伯手语翻译系统
对沙特阿拉伯东部省向聋人提供的服务进行了评估,证实了对聋人社区的高度支持需求。本文提出将Pepper机器人用于识别和翻译阿拉伯手语(ArSL)任务,机器人从输入视频中提取的每个关键帧中识别ArSL中字母的静态手势,并将其翻译成书面文本,反之亦然。本项目旨在对阿拉伯手语进行双向翻译,以填补沙特阿拉伯聋哑人与非聋哑人之间的沟通差距。本文提出的方法是计算机视觉,利用辣椒机器人的摄像头和传感器;自然语言处理,将自然语音转换为手语;深度学习,建立卷积神经网络模型,对手语手势进行分类,并将其转换为相应的书面和口头形式。此外,我们使用了两个数据集,第一个数据集是用于训练模型的手势集合,另一个数据集是所有阿拉伯字母和特殊字母的39个动画符号。
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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