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AlessandroVietti
Fixing paper assignments
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Speech recognition systems are still highly dependent on textual orthographic resources, posing a challenge for low-resourcelanguages. Recent research leverages self-supervised learning of unlabeled data or employs multilingual models pre-trainedon high resource languages for fine-tuning on the target low-resource language. These are effective approacheswhen the target language has a shared writing tradition, but when we are confronted with mainly spoken languages, beingthem endangered minority languages, dialects, or regional varieties, other than labeled data, we lack a shared metric toassess speech recognition performance. We first provide a research background on ASR for low-resource languages anddescribe the specific linguistic situation of Campidanese Sardinian, we then evaluate five multilingual ASR models usingtraditional evaluation metrics and an exploratory linguistic analysis. The paper addresses key challenges in developing a toolfor researchers to document and analyze the phonetics and phonology of spoken (endangered) languages.
Automatic Speech Recognition systems (ASR) based on neural networks achieve great results, but it remains unclear which are the linguistic features and representations that the models leverage to perform the recognition. In our study, we used phonological syllables as tokens to fine-tune an end-to-end ASR model due to their relevance as linguistic units. Furthermore, this strategy allowed us to keep track of different types of linguistic features characterizing the tokens. The analysis of the transcriptions generated by the model reveals that factors such as token frequency and lexical stress have a variable impact on the prediction strategies adopted by the ASR system.