现代基于深度学习的生成对抗网络(GANs)综述

Pradhyumna P Mohana
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引用次数: 5

摘要

GANs(生成对抗网络)是近年来流行起来的一种深度学习生成模型。gan可以从高维复杂数据中学习模式,使其对图像、音频和视频处理非常有用。然而,在gan的训练中存在着一些重大的障碍,如不稳定性、模态崩溃和非收敛性。为了解决这些问题,近年来,研究人员通过重新思考网络拓扑,修改目标函数的形式以及将优化方法改为精确方法,开发了各种GAN变体。本文全面分析了GAN结构的进展和优化解决方案,以提高其在各种计算机视觉应用中的效率,并描述了在实现面向CV(计算机视觉)的模型时所面临的挑战。GAN是一种强大的模型,需要进一步研究以解决各种计算机视觉实时应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey of Modern Deep Learning based Generative Adversarial Networks (GANs)
GANs (Generative Adversarial Networks) are a type of deep learning generative model that has lately gained popularity in recent years. GANs can learn patterns from high-dimensional complex data, making them useful for image, audio and video processing. Nonetheless, there are several significant obstacles in the training of GANs, such as instability, mode collapse and non-convergence. To address these issues, researchers have developed a variety of GAN variations by rethinking network topology, modifying the form of goal functions, and changing optimization to precise methods in recent years. This paper describes a thorough analysis of the progress of GAN architecture and optimization solutions to improve its efficiency in various computer vision applications and challenges that are to be faced while implementing the model towards CV (computer vision) is described. It is believed that GAN is strong model and further researches are needed to work in this area to solve a variety of computer vision real time applications.
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