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An Enhanced Training- Based Arabic Sign Language Virtual Interpreter Using Parallel Recurrent Neural Networks

机译:基于并行递归神经网络的增强型基于培训的阿拉伯手语虚拟口译员

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摘要

Intelligent machine translation systems have a remarkable importance in integrating people with disabilities in community. Arabic to Arabic sign language systems are limited. Deep Learning (DL) was successfully applied to problems related to music information retrieval, image recognition and text recognition, but its use in sign language recognition is rare. This paper introduces an automatic virtual translation system from Arabic language into Arabic Sign Language (ASL) vja a popular DL architecture: The Recurrent Neural Network (RNN). The proposed system uses a deep neural network training-based system for ASL that convolves RNN and Graphical Processing Unit (GPU) parallel processors. The system is evaluated using both objective and subjective measures. Obtained results are towards reducing errors, speeding up avatar and expressing signs and facial expressions in a well-received manner by Deaf. The signing avatar is highly encouraged as a simulator for natural human signs.
机译:智能机器翻译系统对于将残疾人融入社区至关重要。阿拉伯语到阿拉伯语的手语系统有限。深度学习(DL)已成功应用于与音乐信息检索,图像识别和文本识别有关的问题,但很少用于手语识别。本文介绍了一种从阿拉伯语言到阿拉伯手语(ASL)的自动虚拟翻译系统,这是一种流行的DL架构:递归神经网络(RNN)。拟议的系统使用针对ASL的基于深度神经网络训练的系统,该系统将RNN和图形处理单元(GPU)并行处理器进行卷积。该系统使用客观和主观措施进行评估。所获得的结果将有助于减少错误,加快化身并以聋人很好的方式表达体征和面部表情。强烈建议将签名化身用作自然人符号的模拟器。

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