生成对抗网络:一个全面的回顾和前进的方向

IF 0.8 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Boriane Y. Tchaleu;Alain R. Ndjiongue;Collins A. Leke
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引用次数: 0

摘要

识别数据模式的深度学习能力最近在教育领域很受欢迎。生成对抗网络(GANs)创建于2014年,是基于博弈论的深度学习生成模型的创新类,由两个参与者组成。gan使用两个神经网络从零开始生成数据:生成器和鉴别器。自诞生以来,gan已经在许多应用中得到了应用,并有其优点和缺点。鉴于如此漫长的旅程,评估技术是必不可少的,因为它为读者提供了前进的道路。为此,本文回顾了gan,并探讨了在评估和训练过程中出现的一些基本挑战。我们还讨论了gan的挑战和详细的后续解决方案。通过一个单一的背景,我们解释了GAN技术背后的原因,并研究了它的方向和动机。我们讨论了gan的不同变体和实际应用示例,包括跨各个部门的性能评估指标。我们考虑了最近获得的结果,并强调了进一步研究的想法。这种详细的回顾将使读者更好地理解gan的可能用途。它还将展示它们如何帮助解决各种学科中的当前问题。在此之前,本文回顾了gan的架构和网络方法,并详细阐述了挑战和解决方案。然后引导读者通过关于gan的各种应用的文献和与gan相关的研究兴趣的重要性。作为最后一步,我们建议前进的方向并结束审查。
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: A comprehensive review and the way forward
The deep learning ability to recognize patterns in data has recently become popular within education. Created in 2014, generative adversarial networks (GANs) are innovative classes of deep learning generative models based on game theory and consist of two players. GANs generate data from scratch using two neural networks: the generator and the discriminator. Since their creation, GANs have been utilized in many applications and have advantages and disadvantages. In light of such a long journey, evaluating the technology is essential as it provides readers with the way forward. To this end, this paper reviews GANs and explores some fundamental challenges that develop during evaluation and training. We also discuss GANs' challenges and elaborate subsequent solutions. Through a single context, we explain the reasoning behind the GAN technology and examine its direction and motivation. We discuss different variants of GANs and real-world application examples, including performance evaluation metrics across various sectors. We consider results obtained recently and highlight ideas for further investigation. This detailed retrospect will give the reader a better understanding of the possible uses of GANs. It will also show how they can help address current issues in a variety of disciplines. Before that, the paper reviews GANs' architectures and network approaches and elaborates on challenges and solutions. The reader is then guided through the literature on the various applications of GANs and the importance of the research interest associated with GANs. As a final step, we suggest the way forward and conclude the review.
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来源期刊
SAIEE Africa Research Journal
SAIEE Africa Research Journal ENGINEERING, ELECTRICAL & ELECTRONIC-
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