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ASR2K: Speech Recognition for Around 2000 Languages without Audio

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arxiv 2209.02842 v1 pith:AEOHLWMV submitted 2022-09-06 cs.CL

ASR2K: Speech Recognition for Around 2000 Languages without Audio

classification cs.CL
keywords languagesspeechmodelsrecognitiondatasetdatasetslanguagen-gram
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Most recent speech recognition models rely on large supervised datasets, which are unavailable for many low-resource languages. In this work, we present a speech recognition pipeline that does not require any audio for the target language. The only assumption is that we have access to raw text datasets or a set of n-gram statistics. Our speech pipeline consists of three components: acoustic, pronunciation, and language models. Unlike the standard pipeline, our acoustic and pronunciation models use multilingual models without any supervision. The language model is built using n-gram statistics or the raw text dataset. We build speech recognition for 1909 languages by combining it with Crubadan: a large endangered languages n-gram database. Furthermore, we test our approach on 129 languages across two datasets: Common Voice and CMU Wilderness dataset. We achieve 50% CER and 74% WER on the Wilderness dataset with Crubadan statistics only and improve them to 45% CER and 69% WER when using 10000 raw text utterances.

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