Culture and Art Management of Hunan University, Korea, Guangzhou City 62399, Republic of Korea.
Comput Intell Neurosci. 2022 Jan 13;2022:6075398. doi: 10.1155/2022/6075398. eCollection 2022.
With the continuous development and popularization of artificial intelligence technology in recent years, the field of deep learning has also developed relatively rapidly. The application of deep learning technology has attracted attention in image detection, image recognition, image recoloring, and image artistic style transfer. Some image art style transfer techniques with deep learning as the core are also widely used. This article intends to create an image art style transfer algorithm to quickly realize the image art style transfer based on the generation of confrontation network. The principle of generating a confrontation network is mainly to change the traditional deconvolution operation, by adjusting the image size and then convolving, using the content encoder and style encoder to encode the content and style of the selected image, and by extracting the content and style features. In order to enhance the effect of image artistic style transfer, the image is recognized by using a multi-scale discriminator. The experimental results show that this algorithm is effective and has great application and promotion value.
近年来,随着人工智能技术的不断发展和普及,深度学习领域也得到了较快的发展。深度学习技术的应用在图像检测、图像识别、图像重绘和图像艺术风格迁移等方面引起了关注。一些以深度学习为核心的图像艺术风格迁移技术也得到了广泛的应用。本文旨在创建一种图像艺术风格迁移算法,基于生成式对抗网络快速实现图像艺术风格迁移。生成式对抗网络的原理主要是改变传统的反卷积操作,通过调整图像大小然后进行卷积,使用内容编码器和风格编码器对选择的图像的内容和风格进行编码,并通过提取内容和风格特征。为了增强图像艺术风格迁移的效果,使用多尺度鉴别器对图像进行识别。实验结果表明,该算法是有效的,具有很大的应用和推广价值。