Audio Synthesis Translation and Auto-Summarization (ASTA)

Jivin Varghese, Pakshal Ranawat, Ruvin Rodrigues, Phiroj Shaikh
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Abstract

Availability of time has been a major issue in recent years for mankind. There has always been a huge demand for automation, since it can tremendously decrease time for doing menial tasks. This proposed project focuses on automation of text translation, summarization and speech synthesis which could reduce time required for reading books. In this paper, we present multiple machine learning models that synthesize text into speech and also into summarized text of Devanagari script. The main objective of the project is to conduct proper examination of the existing architecture of the text translation and summarization methodologies and to provide a robust system which is a cumulation of converting PDF files to audio files and also summarization of the PDF and translating into Devanagari text of the summarized English narrative. The architecture is called Audio Synthesis Translation and Auto-summarization (ASTA) and uses multiple models such as RNN sequence to sequence, NMT, Tacotron 2 and Waveglow. In addition to this, we use Google Vision OCR for text extraction from PDF. This system is an integration of multiple machine learning models and works as a pipelined system.
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音频合成翻译与自动摘要(ASTA)
近年来,时间的有限性一直是人类面临的一个主要问题。人们一直对自动化有着巨大的需求,因为它可以极大地减少做琐碎工作的时间。这个计划的重点是文本翻译,摘要和语音合成的自动化,可以减少阅读书籍所需的时间。在本文中,我们提出了多种机器学习模型,将文本合成为语音,也合成为Devanagari脚本的摘要文本。该项目的主要目标是对文本翻译和摘要方法的现有架构进行适当的检查,并提供一个强大的系统,该系统是将PDF文件转换为音频文件的累积,以及PDF摘要和将摘要的英语叙述翻译成德文语文本。该架构被称为音频合成翻译和自动摘要(ASTA),并使用多种模型,如RNN序列到序列、NMT、Tacotron 2和Waveglow。除此之外,我们还使用Google Vision OCR从PDF中提取文本。该系统是多个机器学习模型的集成,并作为流水线系统工作。
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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