现代神经网络技术文本到图像

Q4 Computer Science
N. Bondareva
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引用次数: 0

摘要

本文讨论了最先进的图形文本到图像神经网络和文本到图像转换方法,分析了迄今为止为文本到图像的转换任务所获得的结果和创建的样本。提出了将神经网络方法应用于环境监测、基础设施和医疗数据分析任务的文本到图像转换的方法。本文综述了神经网络生成的结果及其与文本查询的用户输入语言结构的相关性,并对神经网络生成图像的典型缺陷和伪影进行了识别和分类。神经网络技术在该领域的快速发展可能会对社会、专业市场和媒体产生重大影响,这使得研究神经网络图像并在其他图形内容中识别它们的任务特别重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modern Neural Network Technologies Text-to-Image
This paper discusses state-of-the-art graphical text-to-image neural networks and methods for text-to-image conversion, analyzing the results achieved and samples created to date for text-to-image conversion tasks. Ways of applying neural network approaches to text-to-image transformation for environmental monitoring, infrastructure and medical data analysis tasks are proposed. In this paper the results of neural network generation and its correlation with the user input linguistic constructions of text queries are reviewed, and the typical flaws and artifacts typical of the neural network generated images are identified and classified. The rapid development of neural network technologies in this field could have a significant impact on society, the professional market and the media, which makes the task of studying neural network images and identifying them among other graphic content particularly relevant.
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来源期刊
Scientific Visualization
Scientific Visualization Computer Science-Computer Vision and Pattern Recognition
CiteScore
1.30
自引率
0.00%
发文量
20
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