Image style migration system and method based on three-branch clustering semantic segmentation

A semantic segmentation and migration system technology, applied in the field of image processing and pattern recognition, can solve problems such as no way to obtain, poor clustering effect, and affect the effect of style transfer, and achieve the effect of enhancing contrast strength and promoting vigorous development

Pending Publication Date: 2022-01-07
JIANGSU UNIV OF SCI & TECH
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Problems solved by technology

[0005] Although the above methods can achieve better style transfer effects, there are still the following problems: 1) The paired data sets are difficult to collect or even impossible to obtain, which brings great limitations to image style transfer; 2) After After training, often only one style of results can be obtained, which cannot meet the diverse needs of users; 3) only consider the similarity of the overall style of the image, and cannot retain the specific style of a specific object; 4) there is a problem of style overflow, which destroys the It improves the coordination and viewability of the whole image; 5) Other models that use clustering methods in the process of image style transfer in other technical solutions have the problem that the clustering effect is not good and affects the effect of style transfer6) There will be images with relatively high similarity among the multiple style images output by other technical solutions

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  • Image style migration system and method based on three-branch clustering semantic segmentation
  • Image style migration system and method based on three-branch clustering semantic segmentation
  • Image style migration system and method based on three-branch clustering semantic segmentation

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[0085] specific implementation plan

[0086] The present invention will be described in further detail below in conjunction with the accompanying drawings.

[0087] Such as figure 2 As shown, the image style transfer system based on three-branch clustering semantic segmentation provided by the present invention can finally obtain diverse and artistic style images by applying the improved K-means clustering method to the MUNIT model.

[0088] Such as figure 1 As shown, a kind of image style migration system based on three-branch clustering semantic segmentation of the present invention includes:

[0089] The image preprocessing module is used to add Gaussian noise to the sample image and expand the image data to deal with the problem of uneven texture in the process of image style transfer and poor style transfer effect due to insufficient sample data;

[0090] The semantic segmentation module is used to segment the semantic blocks in the content image and style image respe...

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Abstract

The invention discloses an image style migration system and method based on three-branch clustering semantic segmentation. The method comprises the steps of image preprocessing, image semantic segmentation, image content and style feature extraction, style matching and image similarity measurement. According to the method, the semantic segmentation technology is adopted, and the problem of style overflow possibly generated in the style migration process is effectively solved by applying the semantic segmentation technology to image style migration; the used MUNIT model belongs to an unsupervised deep learning model, and the model does not need a paired data set and can generate images of various styles, so the diversified requirements of users are met to a great extent; by adopting the step of the image similarity measurement algorithm based on the SSIM index, generation suppression of images with similar styles is realized, and the stability and effectiveness of the whole system are ensured while diversity requirements are met.

Description

technical field [0001] The invention belongs to the technical field of image processing and pattern recognition, and in particular relates to an image style migration system and method based on three-branch clustering semantic segmentation. Background technique [0002] There is a special type of application in the application of deep neural networks, that is, image style transfer. Image style transfer has been developed by Gatys, Johnson and others. Image stylization has been able to obtain satisfactory results under certain conditions. Currently popular image style transfer algorithms are mainly divided into two categories, one is slow style transfer based on image iteration, and the other is fast style transfer based on model iteration. Model iteration-based methods include feed-forward stylized models and GAN-based methods. There are two main representative works based on the feed-forward stylized model, namely the work of Johnson et al. and Ulyanov et al., while there ...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T3/00G06K9/62G06N3/04G06N3/08
CPCG06T3/0012G06N3/08G06N3/045G06F18/2321G06F18/23213
Inventor 程柳祁云嵩姜元昊吴婷凤赵呈祥
Owner JIANGSU UNIV OF SCI & TECH
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