Copy Move Forgery Detection Using an Effective CNN Model
Journal: International Journal of Science and Research (IJSR) (Vol.11, No. 7)Publication Date: 2022-07-05
Authors : Siva Prasad Patnayakuni;
Page : 758-764
Keywords : convolutional neural network; CNN; CMFD; accuracy;
Abstract
Recently, computerized pictures have become utilized in several applications, where they have turned into the focal point of advanced picture handling analysts. Picture false addresses one exciting issue on which analysts focus on their examinations. We focus on the copy move picture fake point as a misleading fraud type. In duplicate move picture imitation, a piece of a picture is replicated and set in a similar picture to create the invention picture. In this paper, a specific convolutional neural network (CNN) design is proposed for the compelling recognition of duplicate move picture fabrication. The proposed Method is computationally lightweight with a reasonable number of convolutional and max-pooling layers. Numerous observational tests have been led to guarantee the effectiveness of the proposed model with regards to accuracy and time. These analyses were finished on benchmark datasets and have achieved 95.53% accuracy.
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