D. T. Caumo, Márcio Pezzini França, Clécio Homrich da Silva
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引用次数: 0
摘要
本研究的目的是识别、综合和分类目前可用的软件,这些软件可以帮助学龄前儿童自发语音的语音转录任务,以评估儿童的语言发展。使用Cochrane、Pubmed和Web of Science数据库,对10年期间(2010年6月至2020年6月)发表的文章进行系统评价,不受地点和语言的限制。搜索策略中使用的术语是“语音”、“语音”、“转录”、“计算机”和“软件”。研究是由两个独立的审稿人使用预先定义的搜索策略选择的。在初始检索中,排除重复后,共发现534篇文献。通过阅读标题和摘要,剩下46篇与主题相关的文章,然后全文阅读。阅读后,24篇文章被纳入研究。结果显示,共有7种软件可用于学龄前儿童自发言语的语音转录,用于不同的分析:LENA和Timestamper(用于咿呀学语和语言前发声),ELAN(用于手势交流,语言外元素和情景上下文),Phon(用于语音和语音分析),CLAN和SALT(用于形态句法,语法和语义方面)以及Praat(用于声学测量)。通过系统综述,可以得出结论,使用软件进行语音记录、样本存储和儿童语言分析具有优势,特别是在自发语音样本的标准化和可靠性方面。语音抄写仍然依赖于人类抄写者的能力和主观性。软件中发现的工具提供了支持,以方便使用音标,音频分割和配对写作,以及分析语音数据。
Phonetic transcription of spontaneous children's speech with the aid of software: a systematic review
The aim of the study was to identify, synthesize and classify the software currently available that can help in the task of phonetic transcription of the spontaneous speech of pre-school children to evaluate the development of children's language. A systematic review was performed for articles published, for the 10-year period (June 2010 to June 2020), without restrictions as to location and language, using the Cochrane, Pubmed and Web of Science databases. The terms used in the search strategies were "phonological", "phonetic", "transcription", "computer" and "software". The studies were selected by two independent reviewers using pre-defined search strategies. In the initial search, after the exclusion of duplicates, 534 articles were found. By reading their titles and abstracts, 46 articles related to the theme were left, which were then read in full. After reading, 24 articles were included in the study. The results revealed a total of seven software available for the phonetic transcription of spontaneous speech from preschoolers used for different analyses: LENA and Timestamper (for babbling and pre-linguistic vocalizations), ELAN (for gestural communication, extralinguistic elements and the situational context), Phon (for phonetic and phonological analyses), CLAN and SALT (for morphosyntactic, grammatical and semantic aspects) and Praat (for acoustic measurements). Through this systematic review, it can be concluded that there are advantages to using software for phonetic transcription, sample storage, and child language analysis, especially concerning standardization and reliability for spontaneous speech samples. Phonetic transcription still relies on the ability and subjectivity of a human transcriber. The tools found in the software provide support to facilitate using phonetic symbols, audio segmentation and pairing to writing, and analysis of speech data.