Hybrid Deep Learning Model Based on GAN and RESNET for Detecting Fake Faces
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Date
2024-06
Journal Title
Journal ISSN
Volume Title
Type
Article
Publisher
Institute of Electrical and Electronics Engineers Inc
Series Info
IEEE Access; Pages 86391 - 86402 ( Volume: 12)
Scientific Journal Rankings
Abstract
While human brains have the ability to distinguish face characteristics, the use of advanced
technology and artificial intelligence blurs the difference between actual and modified images. The evolution
of digital editing applications has led to the fabrication of very lifelike false faces, making it harder for
humans to discriminate between real and made ones. Because of this, techniques like deep learning are
being used increasingly to distinguish between real and artificial faces,producing more consistent and
accurate results. In order to detect fraudulent faces, This paper introduces a pioneering hybrid deep learning
model, which merges the capabilities of Generative Adversarial Networks (GANs) and the Residual Neural
Network (RESNET) architecture, aimed at detecting fake faces. By integrating GANs’ generative strength
with RESNET’s discriminative abilities, the proposed model offers a novel approach to discerning real
from artificial faces. Through a comparative analysis, the performance of the hybrid model is evaluated
against established pre-trained models such as VGG16 and RESNET 50. Results demonstrate the superior
effectiveness of the hybrid model in accurately detecting fake faces, marking a notable advancement in
facial image recognition and authentication. The findings on a benchmark dataset show that the proposed
model obtains outstanding performance measures, including precision 0.79, recall 0.88, F1-score 0.83,
accuracy 0.83, and ROC AUC Score 0.825. The study’s conclusions highlight the hybrid model’s strong
performance in identifying fake faces, especially when it comes to accuracy, precision, and memory
economy. By combining the generative capacity of GANs with the discriminative capabilities of RESNET,
this solves the problems caused by more complex fake face generation approaches.With significant potential
for use in identity verification, social media content moderation, cybersecurity, and other areas, the study
seeks to advance the field of false face identification. In these situations, being able to accurately discriminate
between real and altered faces is crucial. Notably, our suggested model adds Channel-Wise Attention
Mechanisms to RESNET50 at the feature extraction phase, which increases its effectiveness and boosts
its overall performance.
Description
Keywords
Channel-Wise Attention; Computer architecture; Deep Learning; Deep learning; Deepfakes; Face Detection; Faces; Feature extraction; Generative adversarial networks; Generative Adversarial Networks; Real and Fake Faces; Residual neural networks; RESNET