Modeling the effect of linguistic predictability on speech intelligibility prediction.
Amin EdrakiWai-Yip ChanDaniel FogertyJesper JensenPublished in: JASA express letters (2023)
Many existing speech intelligibility prediction (SIP) algorithms can only account for acoustic factors affecting speech intelligibility and cannot predict intelligibility across corpora with different linguistic predictability. To address this, a linguistic component was added to five existing SIP algorithms by estimating linguistic corpus predictability using a pre-trained language model. The results showed improved SIP performance in terms of correlation and prediction error over a mixture of four datasets, each with a different English open-set corpus.