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An analysis of generative adversarial networks and variants for image synthesis on MNIST dataset

机译:Mnist DataSet对图像合成的生成对抗网络和变体分析

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摘要

Generative Adversarial Networks (GANs) are most popular generative frameworks that have achieved compelling performance. They follow an adversarial approach where two deep models generator and discriminator compete with each other. They have been used for many applications especially for image synthesis because of their capability to generate high quality images. In past few years, different variants of GAN have proposed and they produced high quality results for image generation. This paper conducts an analysis of working and architecture of GAN and its popular variants for image generation in detail. In addition, we summarize and compare these models according to different parameters such as architecture, training method, learning type, benefits and performance metrics. Finally, we apply all these methods on a benchmark MNIST dalaset, which contains handwritten digits and compare qualitative and quantitative results. The evaluation is based on quality of generated images, classification accuracy, discriminator loss, generator loss and computational time of these models. The aim of this study is to provide a comprehensive information about GAN and its various models in the field of image synthesis. Our main contribution in this work is critical comparison of popular GAN variants for image generation on MNIST dataset. Moreover, this paper gives insights regarding existing limitations and challenges faced by GAN and discusses associated future research work.
机译:生成的对抗网络(GANS)是最受欢迎的生成框架,实现了令人信服的性能。他们遵循一个逆势方法,其中两个深模型发生器和鉴别者彼此竞争。由于其能力产生高质量图像,它们已被用于许多应用程序。在过去的几年里,甘甘的不同变体已经提出,并为图像生成产生了高质量的结果。本文对GaN的工作和建筑进行了分析,详细介绍了图像生成的流行变体。此外,我们根据诸如架构,培训方法,学习类型,福利和性能度量等不同参数来总结和比较这些模型。最后,我们在基准Mnist Dalaset上应用所有这些方法,其中包含手写数字并比较定性和定量结果。评估基于所产生的图像质量,分类精度,鉴别器丢失,发电机丢失和这些模型的计算时间。本研究的目的是提供有关GaN及其各种模型在图像合成领域的全面信息。我们在这项工作中的主要贡献是MNIST数据集在MNIST DataSet上的流行GaN变体的关键比较。此外,本文提供了甘甘面临的现有限制和挑战的见解,并讨论了相关未来的研究工作。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2020年第20期|13725-13752|共28页
  • 作者单位

    School of Computer Science and Communication Engineering Jiangsu University Zhenjiang China;

    School of Computer Science and Communication Engineering Jiangsu University Zhenjiang China;

    School of Computer Science and Communication Engineering Jiangsu University Zhenjiang China;

    Department of Electronic and Computer Engineering Brunei University London UK;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    GAN; MNIST dataset; Image synthesis; Generator; Discriminator;

    机译:甘姑娘;Mnist DataSet;图像合成;发电机;判别符号;
  • 入库时间 2022-08-18 21:29:15

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