In recent years, Generative Adversarial Networks (GANs) have become a hot topic among researchers and engineers that work with deep learning. It has been a ground-breaking technique which can generate new pieces of content of data in a consistent way. The topic of GANs has exploded in popularity due to its applicability in fields like image generation and synthesis, and music production and composition. GANs have two competing neural networks: a generator and a discriminator. The generator is used to produce new samples or pieces of content, while the discriminator is used to recognize whether the piece of content is real or generated. What makes it different from other generative models is its ability to learn unlabeled samples. In this review paper, we will discuss the evolution of GANs, several improvements proposed by the authors and a brief comparison between the different models. Index Terms generative adversarial networks, unsupervised learning, deep learning.
翻译:近年来,基因反转网络(GANs)已成为研究人员和工程师深造的热门话题,是一个开创性技术,能够以一致的方式产生新的数据内容。GANs专题因其在图像生成和合成以及音乐制作和构成等领域的可应用性而大受欢迎。GANs有两个相互竞争的神经网络:产生者和歧视者。生成者用来制作新的样本或内容片,而歧视者则用来确认内容内容是真实的还是生成的。它与其他基因模型不同之处在于它学习未贴标签样本的能力。在本审查文件中,我们将讨论GANs的演变、作者提出的若干改进以及不同模型之间的简短比较。索引术语为变形对抗网络、不受监督的学习、深层次的学习。