Yang Zhang, Hangyu Xie, Shikai Zhuang, Xiaoan Zhan
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引用次数: 0
摘要
本文介绍了生成式对抗网络(GANs)在图像处理和优化中的应用。GANs 模型可以通过联合训练生成器和判别器生成逼真的图像,并在图像复原任务中取得显著效果。CATGAN 和 DCGAN 是两种常用的 GAN 模型,分别应用于图像分类和图像修复。此外,全局和局部图像修补方法能有效填补图像中的缺失区域,在大图像的修复中表现出良好的效果。总之,基于 GANs 的图像处理和优化方法在实践中展现出了巨大的潜力,为今后图像处理领域的研究和应用提供了有益的启示。
Image Processing and Optimization Using Deep Learning-Based Generative Adversarial Networks (GANs)
This paper introduces the application of generative adversarial networks (GANs) in image processing and optimization. GANs model can generate realistic images by co-training generator and discriminator, and achieve remarkable results in image restoration tasks. CATGAN and DCGAN are two commonly used GAN models applied to image classification and image restoration respectively. In addition, the global and local image patching methods can effectively fill the missing areas in the image and show good results in the restoration of large images. In conclusion, the image processing and optimization method based on GANs has shown great potential in practice and provides beneficial insight for future research and application in the field of image processing.