Handwritten Digits Image Generation with help of Generative Adversarial Network: Machine Learning Approach

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Abstract

In recent years, research into Generative Adversarial Nets (GANs) has increased dramatically. GAN was first proposed in 2014 and has since used in various real-time applications,Includes computer vision and natural language processing for approximately accurate results. Image composition is the most popular study of the many applications of GAN,Studies in this area have already shown the great future of using GAN for image composition.This article shows how to classify image composition methods, reviews different models of text-to-image composition and image-to-image conversionand provides some metrics and future research on image composition using GAN. I will explain the direction of in this paper. In current years, frameworks using Generative Adversarial Networks (GAN) have been very successful in many areas many areas, especially in image generation, asthey can create very realistic and crisp images and train on large datasets. However, successful GAN training can be very difficult if you need high resolution images. Text-to-image compositing, image-to-image conversion, face manipulation, 3D image compositing, and deep master printing are five interesting areas that can be applied to image compositing based on the state-of-the-art GAN technology described in this article. It presents a comprehensive analysis of current GAN-based imaging models, including their strengths and weaknesses. At the same time, recent rediscovery of deep learning and widespread interest in generation methods in the scientific community have made it possible to generate realistic images by learning the data distribution from noise. If the input data contains information about the visual content of the image, the quality of the generated image will improve.
基于生成对抗网络的手写数字图像生成:机器学习方法
近年来,对生成对抗网络(GANs)的研究急剧增加。GAN于2014年首次提出,此后用于各种实时应用,包括计算机视觉和自然语言处理,以获得近似准确的结果。图像合成是GAN众多应用中最热门的研究领域,该领域的研究已经显示了GAN用于图像合成的广阔前景。本文介绍了图像合成方法的分类,综述了文本到图像合成和图像到图像转换的不同模型,并提出了一些使用GAN进行图像合成的指标和未来的研究方向。我将在本文中解释的方向。近年来,使用生成式对抗网络(GAN)的框架在许多领域都取得了非常成功,特别是在图像生成方面,因为它们可以创建非常逼真和清晰的图像,并在大型数据集上进行训练。然而,如果你需要高分辨率的图像,成功的GAN训练可能会非常困难。文本到图像合成、图像到图像转换、人脸处理、3D图像合成和深度主打印是五个有趣的领域,可以应用于基于本文中描述的最先进的GAN技术的图像合成。它提出了当前基于gan的成像模型的全面分析,包括它们的优点和缺点。与此同时,最近深度学习的重新发现和科学界对生成方法的广泛兴趣使得通过从噪声中学习数据分布来生成逼真的图像成为可能。如果输入的数据包含图像视觉内容的信息,生成的图像的质量将得到提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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