Addressing Image Authenticity When Cameras Use Generative AI
arXiv cs.CV / 4/24/2026
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Key Points
- Generative AI capabilities have made online image authenticity a major concern, and the paper extends this problem to camera outputs altered by deep-learning modules inside image signal processors (ISPs).
- It argues that while many hallucinations at capture time are benign, operations like AI digital zoom or low-light enhancement can change image semantics in ways users may not notice.
- The proposed solution recovers an “unhallucinated” version of the captured image by jointly optimizing an image-specific MLP decoder and a modality-specific encoder.
- The method can be applied after capture without access to the camera ISP, and the encoder/decoder are lightweight enough (about 180 KB) to be stored as metadata in common formats like JPEG and HEIC.
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