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Original Article

Copy-Move Image Forgery Detection Using Hybrid DyWT-SIFT- G2NN with Agglomerative Clustering

Sanjay Maheswaran1 Ishwarya N2
1 2 Department of Computer Science and Engineering (Cyber Security), United Institute of Technology, Coimbatore (Affiliated to Anna University), Coimbatore, Tamil Nadu, India.

Published Online: May-August 2026

Pages: 544-550

References

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