Designing High Accuracy Statistical Machine Translation for Sign Language Using Parallel Corpus

IF 0.3 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Achraf Othman, M. Jemni
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引用次数: 9

Abstract

In this article, the authors deal with the machine translation of written English text to sign language. They study the existing systems and issues in order to propose an implantation of a statistical machine translation from written English text to American Sign Language (English/ASL) taking care of several features of sign language. The work proposes a novel approach to build artificial corpus using grammatical dependencies rules owing to the lack of resources for sign language. The parallel corpus was the input of the statistical machine translation, which was used for creating statistical memory translation based on IBM alignment algorithms. These algorithms were enhanced and optimized by integrating the Jaro–Winkler distances in order to decrease training process. Subsequently, based on the constructed translation memory, a decoder was implemented for translating English text to the ASL using a novel proposed transcription system based on gloss annotation. The results were evaluated using the BLEU evaluation metric.
利用并行语料库设计高精度手语统计机器翻译
在本文中,作者研究了书面英语文本到手语的机器翻译。他们研究了现有的系统和问题,以提出一种从书面英语文本到美国手语(英语/ASL)的统计机器翻译的植入,同时考虑到手语的几个特征。由于手语资源缺乏,本文提出了一种利用语法依赖规则构建人工语料库的新方法。并行语料库是统计机器翻译的输入,用于创建基于IBM对齐算法的统计内存翻译。通过对Jaro-Winkler距离的积分,对这些算法进行了增强和优化,以减少训练过程。随后,在构建的翻译记忆库的基础上,采用一种基于注释的转录系统实现了英语文本到美国手语的译码。使用BLEU评价指标对结果进行评价。
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
Journal of Information Technology Research
Journal of Information Technology Research COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
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