Data Augmentation Techniques for Facial Image Generation: A Brief Literature Review
Fecha
2023-09-23Autor
Florencia, Rogelio
García, Vicente
Sánchez Solís, Julia Patricia
Cazares, Blanca Elena
206599
Metadatos
Mostrar el registro completo del ítemResumen
Image processing has gained notoriety over the last few years in
performing various tasks through deep learning (DL) algorithms, such as face recognition
and identity verification. Unfortunately, most of them require a large set of
images for training, usually manually labeled, which is a costly task both in time and
effort, not to mention being prone to human error. Data Augmentation (DA) techniques
have been used to mitigate this situation, as they generate images by applying
variations to real image sets. This chapter presents a brief literature review on
variousDAmethods dedicated to image generation. The technique that has presented
outstanding results in the task of generating artificial images is Generative Adversarial
Networks (GANs). Some recent research papers in which GANs have been
used for the generation of artificial images are presented. General aspects of GANs,
such as their definition, architecture, training, and challenges, are described. Additionally,
the implementation of aGANarchitecture for the generation of artificial face
images from a public set of images is presented. The need for a great computational
capacity to generate images with great sharpness and realism is highlighted.
Colecciones
- Capítulo en libro [232]
El ítem tiene asociados los siguientes archivos de licencia: