Face Matching as a Function of Prior Identity Information in Professional Screeners
Kristopher Korbelak,
Kevin Zish,
Daniel Endres
Abstract:Using a computer-based face matching task we objectively measured face matching performance (reaction time, sensitivity, accuracy) as a function of prior identity source type (Artificial Intelligence (AI), human, none), prior information accuracy (accurate, inaccurate) and task difficulty (high, low) in professional screeners. Participants were required to judge how similar they thought a pair of faces were, to decide whether the faces in each pair were the same person, and then to judge the difficulty of that… Show more
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