Data Augmentation Using GANs for 3D Applications

I Maniadis, V Solachidis, N Vretos… - Recent Advances in 3D …, 2020 - igi-global.com
Recent Advances in 3D Imaging, Modeling, and Reconstruction, 2020igi-global.com
Modern deep learning techniques have proven that they have the capacity to be successful
in a wide area of domains and tasks, including applications related to 3D and 2D images.
However, their quality depends on the quality and quantity of the data with which models are
trained. As the capacity of deep learning models increases, data availability becomes the
most significant. To counter this issue, various techniques are utilized, including data
augmentation, which refers to the practice of expanding the original dataset with artificially …
Abstract
Modern deep learning techniques have proven that they have the capacity to be successful in a wide area of domains and tasks, including applications related to 3D and 2D images. However, their quality depends on the quality and quantity of the data with which models are trained. As the capacity of deep learning models increases, data availability becomes the most significant. To counter this issue, various techniques are utilized, including data augmentation, which refers to the practice of expanding the original dataset with artificially created samples. One approach that has been found is the generative adversarial networks (GANs), which, unlike other domain-agnostic transformation-based methods, can produce diverse samples that belong to a given data distribution. Taking advantage of this property, a multitude of GAN architectures has been leveraged for data augmentation applications. The subject of this chapter is to review and organize implementations of this approach on 3D and 2D imagery, examine the methods that were used, and survey the areas in which they were applied.
IGI Global
以上显示的是最相近的搜索结果。 查看全部搜索结果