HCAICVMay 12, 2025

How good are humans at detecting AI-generated images? Learnings from an experiment

arXiv:2507.18640v16 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

This addresses the problem of misinformation from AI-generated images for the general public, but it is incremental as it builds on existing research with new data.

The study investigated human ability to differentiate AI-generated images from real ones, finding an overall success rate of only 62%, slightly above chance, with participants struggling most on landscapes.

As AI-powered image generation improves, a key question is how well human beings can differentiate between "real" and AI-generated or modified images. Using data collected from the online game "Real or Not Quiz.", this study investigates how effectively people can distinguish AI-generated images from real ones. Participants viewed a randomized set of real and AI-generated images, aiming to identify their authenticity. Analysis of approximately 287,000 image evaluations by over 12,500 global participants revealed an overall success rate of only 62\%, indicating a modest ability, slightly above chance. Participants were most accurate with human portraits but struggled significantly with natural and urban landscapes. These results highlight the inherent challenge humans face in distinguishing AI-generated visual content, particularly images without obvious artifacts or stylistic cues. This study stresses the need for transparency tools, such as watermarks and robust AI detection tools to mitigate the risks of misinformation arising from AI-generated content

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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