Abstract
Now a days, due to advances in computer editing tools, the creation and
manipulation of fake content of images, videos, and audio has become
quickly and easily accessible. Deepfakes are synthetic media created
using Artificial Intelligence (AI), often with advanced deep learning
models, that depict events or individuals that do not exist or did not
occur in reality. Typically, deepfakes involve face swapping or full face
generation, which creates highly realistic but fabricated content. While
such technology has creative and entertainment applications, its misuse
has raised serious concerns, including the spread of misinformation,
manipulation of digital evidence, and identity-related crimes. The
widespread use of masks after the COVID-19 pandemic has further
complicated detection, as hidden facial features make it difficult to
distinguish real from altered content. Traditional detection methods
often struggle with masked or morphed faces, highlighting the need for
more robust and general solutions. Addressing these challenges, a
deep learning detection framework based on ResNet152V2 is
introduced. The system was trained and tested on a combined UADFV
and DFFMD dataset consisting of masked and unmasked models. The
ResNet152V2 architecture uses residual connections and block
normalization to improve learning efficiency, feature representation,
and classification accuracy. Experimental findings confirmed the
effectiveness of the proposed system, interms of training accuracy is
achieved 0.9847 confirming its ability to effectively learn
discrimination features. Validation results showed strong
generalization to unseen frames, even in cases of hidden or partially
covered faces.
Authors
K. Thulasimani, J. Pooja
Government College of Engineering, Tirunelveli, India
Keywords
Deepfake Detection, Artificial Intelligence (AI), ResNet152V2, Masked Faces, Image and Video Manipulation