A PRISMA-driven Review of Speech Recognition based on English, Mandarin Chinese, Hindi and Urdu Language

Muhammad Hazique Khatri, Humera Tariq, Maryam Feroze, Ebad Ali, Zeeshan Anjum Junaidi
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Abstract

The objective of this PRISMA-Driven systematic review is to analyze the relative progress of Urdu speech recognition for the very first time by comparing it mainly with three selected languages; English, Mandarin Chinese, and Hindi based on Artificially Intelligent (AI) building blocks i.e. datasets, feature extraction techniques, experimental design, acoustic and language models. The selection of languages embarks from the speakers of a particular language which reveals that the chosen languages are the world's top spoken languages while Urdu ranks at number ten and is continuously progressing. A total of 176 articles were extracted from the Google Scholar database using custom queries for each language. Among them, 47 articles were selected including 5 review articles and 42 research articles, as per our inclusion criteria and after undergoing quality assessment checks. Comparative research has been designed and findings were organized based on four possible speech types i.e. spontaneous, continuous, connected words and isolated words; twenty-one datasets inclusive benchmark; MFCC, Triangular, Mel spectrogram and Log Mel features; state-of-the-art acoustic and language models; and recognition performance. The findings presented in this systematic literature review have enlightened Urdu and Hindi research towards the best available AI and deep learning practices of English and Mandarin Chinese primarily Triangular filters, Mel spectrogram, Transformers, and Attention as these techniques reveal recent trends and achieved breakthrough performance evident by their word error rate, character error rate, and perplexity.
基于 PRISMA 的英语、中文普通话、印地语和乌尔都语语音识别综述
本 PRISMA 驱动的系统性综述旨在分析乌尔都语语音识别的相对进展,首次将其与三种选定的语言(英语、汉语普通话和印地语)进行比较,比较的基础是人工智能(AI)构建模块,即数据集、特征提取技术、实验设计、声学和语言模型。语言的选择来自于特定语言的使用者,这表明所选择的语言是世界上最常用的语言,而乌尔都语排名第十,并且还在不断进步。通过对每种语言的自定义查询,我们从谷歌学术数据库中共提取了 176 篇文章。根据我们的收录标准,并经过质量评估检查,从中挑选出 47 篇文章,包括 5 篇评论文章和 42 篇研究文章。比较研究是根据四种可能的语音类型(即自发语音、连续语音、连接词和孤立词)、21 个数据集(包括基准)、MFCC、三角、梅尔频谱图和对数梅尔特征、最先进的声学和语言模型以及识别性能进行设计和整理的。本系统性文献综述中的研究结果启发了乌尔都语和印地语研究人员对英语和汉语普通话的最佳可用人工智能和深度学习实践进行研究,主要是三角滤波器、梅尔频谱图、变换器和注意力,因为这些技术揭示了最新趋势,并通过其单词错误率、字符错误率和易错性实现了突破性性能。
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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