Crowds Improve Human Detection of AI-Synthesised Faces
Artificial intelligence can now synthesise face images which people cannot distinguish from real faces. Here, we investigated the wisdom of the (outer) crowd (averaging individuals' responses to the same trial) and inner crowd (averaging the same individual's responses to the same trial after completing the test twice) as routes to increased performance. In Experiment 1, participants viewed synthetic and real faces, and rated whether they thought each face was synthetic or real using a 1–7 scale. Each participant completed the task twice. Inner crowds showed little benefit over individual responses, and we found no associations between performance and personality factors. However, we found increases in performance with increasing sizes of outer crowd. In Experiment 2, participants judged each face only once, providing a binary ‘synthetic/real’ response, along with a confidence rating and an estimate of the percentage of other participants that they thought agreed with their answer. We compared three methods of aggregation for outer crowd decisions, finding that the majority vote provided the best performance for small crowds. However, the ‘surprisingly popular’ solution outperformed the majority vote and the confidence-weighted approach for larger crowds. Taken together, we demonstrate the use of outer crowds as a robust method of improvement during synthetic face detection, comparable with previous approaches based on training interventions.
History
School affiliated with
- School of Psychology, Sport Science and Wellbeing
- College of Health and Science (Research Outputs)
Publication Title
Applied Cognitive PsychologyVolume
38Issue
5Pages/Article Number
e4245Publisher
WileyExternal DOI
ISSN
0888-4080eISSN
1099-0720Date Submitted
2024-04-26Date Accepted
2024-08-20Date of First Publication
2024-09-05Date of Final Publication
2024-09-05Open Access Status
- Open Access