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基于边缘增强和关联损失的服装图像风格迁移

陈雨琪 薛涛 刘俊华

现代纺织技术2024,Vol.32Issue(8):117-126,10.
现代纺织技术2024,Vol.32Issue(8):117-126,10.DOI:10.19398/j.att.202311018

基于边缘增强和关联损失的服装图像风格迁移

Clothing pattern style transfer based on edge enhancement and association loss

陈雨琪 1薛涛 1刘俊华1

作者信息

  • 1. 西安工程大学计算机科学学院,西安 710600
  • 折叠

摘要

Abstract

With the continuous upgrading and iteration of image processing and deep mining technologies,and their continuous application in people's daily work and life,many scholars have also deepened their research on images. Clothing design is an important field of image application,and the pattern style of clothing can to some extent affect customer satisfaction with clothing.The transfer of clothing pattern styles can replace corresponding styles of clothing according to individual needs,and it is a product of the development of image processing and greatly caters to the spiritual needs of the public.Style transfer,mainly based on deep learning algorithms,refers to identifying the edges,colors,and textures of the style map,and transferring them to the edited content map,so that the final generated image contains the basic texture features of the style image.The research on clothing patterns mainly focuses on changing styles,which is also the focus of research.Integrating numerous different styles into corresponding clothing patterns can make clothing styles more diverse and quickly meet people's needs.The traditional clothing pattern style transfer style is relatively single,mostly consisting of simple texture features,and the image generation effect is not ideal.There are still many difficulties in improving the clarity,quality,and contrast of style and color for image transfer with different styles.Clothing style transfer generally uses convolutional neural networks as the basic algorithm for feature recognition,mainly to extract features from the original image and record them in the feature map.Different features correspond to different feature maps,and then through feature calculation,the transfer process is completed by aligning the style map and content map.However,most existing style transfer algorithms are suitable for image style transfer,and directly applying these methods to clothing style transfer causes unsatisfactory results. This article proposed a clothing transfer method called EnAdaIN based on edge enhancement and association loss.Firstly,the original edge features of the image were extracted,and then Mask R-CNN was used for semantic segmentation.Then,the content image and style image were added to the improved EnAdaIN model based on spatial association loss.After obtaining the style transfer pattern,the extracted edge features and semantic style image were fused.Finally,the pattern style of the clothing was transferred.The spatial association loss algorithm that combines content loss algorithm and style loss algorithm can further improve the feature similarity and detail display of images.The experiment shows that the peak signal-to-noise ratio of the model in this article has improved by more than 0.95 percentage points compared to other models,the structural similarity has improved by more than 2.43 percentage points,and the transfer efficiency of the model has improved by more than 3.53 percentage points.The generated image information has richer colors and more obvious features,further improving the contrast and quality of the image.

关键词

AdaIN/关联损失/风格迁移/服装图案迁移

Key words

AdaIN/associated loss/style transfer/clothing pattern transfer

分类

轻工纺织

引用本文复制引用

陈雨琪,薛涛,刘俊华..基于边缘增强和关联损失的服装图像风格迁移[J].现代纺织技术,2024,32(8):117-126,10.

基金项目

国家自然科学青年基金项目(62202366) (62202366)

陕西省技术创新引导专项计划项目(2020CGXNG-012) (2020CGXNG-012)

西安市重大科技成果转化产业化项目(23CGZHCYH0008) (23CGZHCYH0008)

现代纺织技术

OA北大核心CSTPCD

1009-265X

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