Design of Translation Error Correction System Based on Improved Seq2Seq

Ting Chen
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Abstract

Speech translation technology is an important booster for promoting social communication and advancing human civilization. With the solid advancement of theories and technologies such as speech processing and machine translation, as well as the continuous deepening and development of computer science, the computing power and storage capacity have been further improved. Speech translation systems widely used in English, French, English and Chinese have successively reached a commercial level. However, the development of speech translation systems is limited by corpus resources and a lack of bilingual language research. The experiments and applications of speech translation in some languages are still in its early stages. In addition, existing research mostly adopts a cascading voice translation system as the basis, breaking through the key issues individually, and less adopts direct voice translation methods without relying on intermediate text representation, which brings problems such as cumbersome research content, complex translation models, and long translation delays. This article mainly focuses on the design of a translation error correction system based on improved Seq2Seq. Firstly, relevant research is summarized, relevant application methods are proposed, and the results are discussed. I hope to bring some inspiration to relevant researchers and provide assistance for the development of related fields.
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基于改进型 Seq2Seq 的翻译纠错系统设计
语音翻译技术是促进社会交流、推动人类文明进步的重要助推器。随着语音处理、机器翻译等理论和技术的扎实推进,以及计算机科学的不断深入和发展,计算能力和存储能力进一步提高。广泛应用于英语、法语、英语和汉语的语音翻译系统已相继达到商用水平。然而,语料库资源和双语语言研究的缺乏限制了语音翻译系统的发展。语音翻译在一些语言中的实验和应用还处于初级阶段。此外,现有研究多采用级联式语音翻译系统为基础,逐个突破关键问题,较少采用不依赖中间文本表示的直接语音翻译方法,带来了研究内容繁琐、翻译模型复杂、翻译延迟时间长等问题。本文主要研究基于改进的 Seq2Seq 的翻译纠错系统的设计。首先总结了相关研究,提出了相关应用方法,并对结果进行了讨论。希望能给相关研究人员带来一些启发,为相关领域的发展提供帮助。
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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