生成对抗网络,它们的各种类型,比较分析,以及在不同领域的应用

Dipanshi Singh, Anil Ahlawat
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引用次数: 0

摘要

GANs(生成对抗网络)是两个相互竞争的神经网络,以开发最初没有的新数据。如果我们在图像上训练GAN,得到的图像将具有真实的特征。GAN由两个子模型组成,其中一个被称为生成器模型,另一个被称为鉴别器模型。Generator从输入数据生成数据。Discriminator检查或区分数据是来自真实世界的样本还是生成的样本。该模型是针对无监督学习方法给出的,但它也可以应用于半监督模型。在本文中,我们介绍了gan的研究概况。首先,我们解释什么是简单的生成对抗网络(gan),什么是不同类型的gan,然后是生成对抗网络(gan)的应用,然后我们解释使用gan的不同领域,最后是不同领域或领域的未来gan,或者我们如何在技术和研究中使用gan作为未来发展的方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Adversarial Networks, Their Various Types, A Comparative Analysis, and Applications in Different Areas
GANs(Generative Adversarial Networks) are two neural networks that compete with each other to develop new data which hasn't been there originally. If we train the GAN on images, the resultant will be imaged with realistic characteristics. A GAN consists of two sub-models in which is called a generator model and the other model called the discriminator model. The Generator generates the data from the input data. The Discriminator checks or distinguishes whether the data is a sample from the real world or a generated one. This model was given for the unsupervised learning method, but it can also be applied to semi-supervised models. In this paper, we present a survey on GANs. First, we explain what simply generative adversarial networks(GANs) are, what are the different types of GANs, then what are the applications of generative adversarial networks(GANs) and then we explain the different areas in which GANs are being used and lastly what future GANs hold in different areas or fields or how can we use GANs in technology and research as a future evolving aspect.
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