Aug. 3, 2023, 2:11 p.m. | Rob Thubron

TechSpot www.techspot.com


The study was performed by Kimberly Mai at University College London and her colleagues, who used a text-to-speech algorithm trained on two publicly available datasets. Fifty deepfaked speech samples were created in both languages to determine if humans could identify the fakes from the real voices.

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