Convolutional Neural Networks for Real and Fake Face Classification

Izdanje: Sinteza 2022 - International Scientific Conference on Information Technology and Data Related Research

DOI: 10.15308/Sinteza-2022-29-35

Oblast: Theoretical Computer Science and Artificial Intelligence Session

Stranice: 29-35

Link: https://portal.sinteza.singidunum.ac.rs/paper/839

Apstrakt:
This paper deals with the problem of classifying images of real and fake faces as it is impossible to distinguish them with the bare eye. Two different convolutional neural networks architecture models are applied. The first one is pre-trained VGG16 model, where transfer learning method is applied on our dataset. The architecture of the second model is based on VGG16 and represents its smaller and lighter version. Techniques such as learning rate decay, dropout and batch normalization was applied in training process. Comparison of obtained results of both models is made.
Ključne reči: Convolutional Neural Network, Deep Learning, Fake Face Image Classification, Transfer Learning, VGG16
Priložene datoteke:
  • 29-35 ( veličina: 697,25 KB, broj pregleda: 189 )

Preuzimanje citata:

BibTeX format
@article{article,
  author  = {N. Perišić and R. Jovanović}, 
  title   = {Convolutional Neural Networks for Real and Fake Face Classification},
  journal = {Sinteza 2022 - International Scientific Conference on Information Technology and Data Related Research},
  year    = 2022,
  pages   = {29-35},
  doi     = {10.15308/Sinteza-2022-29-35}
}
RefWorks Tagged format
RT Conference Proceedings
A1 Natalija Perišić
A1 Radiša Jovanović
T1 Convolutional Neural Networks for Real and Fake Face Classification
AD Univerzitet Singidunum, Beograd, Beograd, Srbija
YR 2022
NO doi: 10.15308/Sinteza-2022-29-35
Unapred formatirani prikaz citata
N. Perišić and R. Jovanović, Convolutional Neural Networks for Real and Fake Face Classification, Univerzitet Singidunum, Beograd, 2022, doi:10.15308/Sinteza-2022-29-35