FaceGAN: Robust Face Recognitionusing Generative Adversarial Networks (GAN) Algorithm
Dublin Core
Title
FaceGAN: Robust Face Recognitionusing Generative Adversarial Networks (GAN) Algorithm
            Subject
Prediction, Deep Learning GAN, Face Classification
            Description
Generative Adversarial Networks (GANs)are a type of neural network that can generate synthetic images that are often  indistinguishable  from real ones.  The  article explores  GAN  to  augment  existing  datasets  or generate new onesfor training classifiers. The competitive training process of GANs results in a generator network that can produce increasingly realistic imagesto create more diverse and balanced datasets for training classifiers.The article  discusses  several  successful  applications  of  GANs  in  image  classification,  including  object  recognition, face classification, and medical image analysis. The datasets used in this article are CelebA and FER2013. The CelebA dataset consists of 202,599 celebrity images with 40 attributes, such as gender, age, and facial hair. The FER2013 dataset consists of 35,887 images of faces with sevenotheremotions, including anger, disgust, fear, happiness,  sadness,  surprise,  and  neutral.The  dataset  is  divided  into  training,  validation,  and  test  sets.We resized the images to 64x64 pixels and normalizedthe pixel values between -1 and 1, then trained a GANmodel usingthe  dataset. We  evaluate  the  performance  of  our  approach  and  compare  it  with  several  state-of-the-art methods, including Support Vector Machines (SVM) and Convolutional Neural Networks (CNN).We evaluate the performance  of  our  approach  and  compare  it  with  several  state-of-the-art  methods,  including  Support  Vector Machines (SVM) and Convolutional Neural Networks (CNN),with the results that our approach outperforms SVM and  CNN  methods  on  both  datasets,  achieving  a  classification  accuracy  of  89.2%  on  CelebA  and  72.5%  in FER2013.Meanwhile,  classification  accuracy  on  SVM  was  82.3%  on  CelebA  and  65.4%  on  FER2013. Classification accuracy on CNN is 87.9% on CelebA and 70.8% on FER2013
            Creator
Maryama Kurnia Amri1, Bambang Sugiantoro
            Source
https://ijicom.respati.ac.id/index.php/ijicom/article/view/57/47
            Date
August 2023
            Contributor
Fajar bagus W
            Format
PDF
            Language
English
            Type
Text
            Files
Collection
Citation
Maryama Kurnia Amri1, Bambang Sugiantoro, “FaceGAN: Robust Face Recognitionusing Generative Adversarial Networks (GAN) Algorithm,” Repository Horizon University Indonesia, accessed October 31, 2025, https://repository.horizon.ac.id/items/show/8383.