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Image Copy Detection for Diffusion Models

Neural Information Processing Systems

Images produced by diffusion models are increasingly popular in digital artwork and visual marketing. However, such generated images might replicate content from existing ones and pose the challenge of content originality. Existing Image Copy Detection (ICD) models, though accurate in detecting hand-crafted replicas, overlook the challenge from diffusion models. This motivates us to introduce ICDiff, the first ICD specialized for diffusion models. To this end, we construct a Diffusion-Replication (D-Rep) dataset and correspondingly propose a novel deep embedding method.


1a000ee0f122d0bbd3edb9bf55170ea3-Paper-Conference.pdf

Neural Information Processing Systems

Images produced bydiffusionmodels areincreasingly popular indigital artwork and visual marketing. However, such generated images might replicate content from existing ones andpose thechallenge ofcontent originality.



Image Copy Detection for Diffusion Models

Neural Information Processing Systems

Images produced by diffusion models are increasingly popular in digital artwork and visual marketing. However, such generated images might replicate content from existing ones and pose the challenge of content originality. Existing Image Copy Detection (ICD) models, though accurate in detecting hand-crafted replicas, overlook the challenge from diffusion models. This motivates us to introduce ICDiff, the first ICD specialized for diffusion models. To this end, we construct a Diffusion-Replication (D-Rep) dataset and correspondingly propose a novel deep embedding method.