Artificial Intelligence for Sign Language Translation – A Design Science Research Study

IF 1.7 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Gero Strobel, Thorsten Schoormann, Leonardo Banh, Frederik Möller
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引用次数: 1

Abstract

Although our digitalized society is able to foster social inclusion and integration, there are still numerous communities suffering from inequality. This is also the case with deaf people. About 750,000 deaf people in the European Union and over 4 million deaf people in the United States face daily challenges in terms of communication and participation. This occurs not only in leisure activities but also, and more importantly, in emergency situations. To provide equal environments and allow people with hearing handicaps to communicate in their native language, this paper presents an AI-based sign language translator. We adopted a transformer neural network capable of analyzing over 500 data points from a person’s gestures and face to translate sign language into text. We have designed a machine learning pipeline that enables the translator to evolve, build new datasets, and train sign language recognition models. As proof of concept, we instantiated a sign language interpreter for an emergency call with over 200 phrases. The overall goal is to support people with hearing inabilities by enabling them to participate in economic, social, political, and cultural life.
人工智能在手语翻译中的应用——设计科学研究
虽然我们的数字化社会能够促进社会包容和融合,但仍有许多社区遭受不平等。聋哑人也是如此。在欧盟大约有75万聋人,在美国有400多万聋人每天都面临着沟通和参与方面的挑战。这不仅发生在休闲活动中,更重要的是,也发生在紧急情况中。为了提供平等的环境,使听障人士能够用母语进行交流,本文提出了一种基于人工智能的手语翻译器。我们采用了一个变压器神经网络,能够分析来自一个人的手势和面部的500多个数据点,将手语翻译成文本。我们设计了一个机器学习管道,使翻译人员能够发展,建立新的数据集,并训练手语识别模型。作为概念验证,我们实例化了一个包含200多个短语的紧急呼叫手语翻译。总体目标是支持听障人士,使他们能够参与经济、社会、政治和文化生活。
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
Communications of the Association for Information Systems
Communications of the Association for Information Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.90
自引率
20.00%
发文量
35
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