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Detecting CNN-Generated Facial Images in Real-World Scenarios

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arxiv 2005.05632 v1 pith:TIQ7GKMG submitted 2020-05-12 cs.CV

Detecting CNN-Generated Facial Images in Real-World Scenarios

classification cs.CV
keywords methodsdetectionimagesreal-worldcnn-generatedscenariosdetectingevaluate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Artificial, CNN-generated images are now of such high quality that humans have trouble distinguishing them from real images. Several algorithmic detection methods have been proposed, but these appear to generalize poorly to data from unknown sources, making them infeasible for real-world scenarios. In this work, we present a framework for evaluating detection methods under real-world conditions, consisting of cross-model, cross-data, and post-processing evaluation, and we evaluate state-of-the-art detection methods using the proposed framework. Furthermore, we examine the usefulness of commonly used image pre-processing methods. Lastly, we evaluate human performance on detecting CNN-generated images, along with factors that influence this performance, by conducting an online survey. Our results suggest that CNN-based detection methods are not yet robust enough to be used in real-world scenarios.

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