The Faetar Benchmark: Speech Recognition in a Very Under-Resourced Language

Michael Ong, Sean Robertson, Leo Peckham, Alba Jorquera Jimenez de Aberasturi, Paula Arkhangorodsky, Robin Huo, Aman Sakhardande, Mark Hallap, Naomi Nagy, Ewan Dunbar
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Abstract

We introduce the Faetar Automatic Speech Recognition Benchmark, a benchmark corpus designed to push the limits of current approaches to low-resource speech recognition. Faetar, a Franco-Proven\c{c}al variety spoken primarily in Italy, has no standard orthography, has virtually no existing textual or speech resources other than what is included in the benchmark, and is quite different from other forms of Franco-Proven\c{c}al. The corpus comes from field recordings, most of which are noisy, for which only 5 hrs have matching transcriptions, and for which forced alignment is of variable quality. The corpus contains an additional 20 hrs of unlabelled speech. We report baseline results from state-of-the-art multilingual speech foundation models with a best phone error rate of 30.4%, using a pipeline that continues pre-training on the foundation model using the unlabelled set.
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Faetar 基准:资源极度匮乏语言的语音识别
我们介绍了 Faetar 自动语音识别基准,这是一个旨在挑战当前低资源语音识别方法极限的基准语料库。Faetar是一种主要在意大利使用的法语-普罗旺斯语,它没有标准的正字法,除了基准语料之外几乎没有其他现存的文本或语音资源,而且与其他形式的法语-普罗旺斯语有很大不同。该语料库来自田野记录,其中大部分都有噪声,只有 5 小时有匹配的译文,强制对齐的质量也参差不齐。该语料库还包含 20 小时的未标记语音。我们报告了最先进的多语言语音基础模型的基准结果,最佳语音错误率为 30.4%,使用的方法是继续使用未标记集对基础模型进行预训练。
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