Algorithm Comparison and Evaluation of GAN Models Based on Image Transferring from Desert to Green Field

Some time-consuming and labor-intensive techniques, like manual drawing or interactive modeling with an image editing system, are often used to show how a desert area might look after being transformed into a green field (oasis) in an image way. In order to improve the rendering efficiency of image...

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Main Authors: Zhenyu Liu, Hongjun Li
Format: Article
Language:English
Published: Hindawi Limited 2023-01-01
Series:Advances in Multimedia
Online Access:http://dx.doi.org/10.1155/2023/3775614
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author Zhenyu Liu
Hongjun Li
author_facet Zhenyu Liu
Hongjun Li
author_sort Zhenyu Liu
collection DOAJ
description Some time-consuming and labor-intensive techniques, like manual drawing or interactive modeling with an image editing system, are often used to show how a desert area might look after being transformed into a green field (oasis) in an image way. In order to improve the rendering efficiency of image style transformation and increase the variety of renderings, we can build an algorithm for automatically generating style images based on machine learning. In this paper, after comparing seven generative adversarial network (GAN) models in the way of theory analysis, we propose a method for generating green fields using desert images as input data, and a comprehensive comparison is presented on how GANs are currently applied to solve the desert-to-oasis problem. Experimental results show that two GAN models, geometrically consistent GAN and cyclic consistent GAN, have the best transfer effect of a desert image to oasis one in the view of quantitative indicators, Fréchet inception distance, and learned perceptual image patch similarity.
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spelling doaj.art-1a7df3dbe4ae496ca4225f3133fb36a32023-07-28T00:00:03ZengHindawi LimitedAdvances in Multimedia1687-56992023-01-01202310.1155/2023/3775614Algorithm Comparison and Evaluation of GAN Models Based on Image Transferring from Desert to Green FieldZhenyu Liu0Hongjun Li1College of ScienceCollege of ScienceSome time-consuming and labor-intensive techniques, like manual drawing or interactive modeling with an image editing system, are often used to show how a desert area might look after being transformed into a green field (oasis) in an image way. In order to improve the rendering efficiency of image style transformation and increase the variety of renderings, we can build an algorithm for automatically generating style images based on machine learning. In this paper, after comparing seven generative adversarial network (GAN) models in the way of theory analysis, we propose a method for generating green fields using desert images as input data, and a comprehensive comparison is presented on how GANs are currently applied to solve the desert-to-oasis problem. Experimental results show that two GAN models, geometrically consistent GAN and cyclic consistent GAN, have the best transfer effect of a desert image to oasis one in the view of quantitative indicators, Fréchet inception distance, and learned perceptual image patch similarity.http://dx.doi.org/10.1155/2023/3775614
spellingShingle Zhenyu Liu
Hongjun Li
Algorithm Comparison and Evaluation of GAN Models Based on Image Transferring from Desert to Green Field
Advances in Multimedia
title Algorithm Comparison and Evaluation of GAN Models Based on Image Transferring from Desert to Green Field
title_full Algorithm Comparison and Evaluation of GAN Models Based on Image Transferring from Desert to Green Field
title_fullStr Algorithm Comparison and Evaluation of GAN Models Based on Image Transferring from Desert to Green Field
title_full_unstemmed Algorithm Comparison and Evaluation of GAN Models Based on Image Transferring from Desert to Green Field
title_short Algorithm Comparison and Evaluation of GAN Models Based on Image Transferring from Desert to Green Field
title_sort algorithm comparison and evaluation of gan models based on image transferring from desert to green field
url http://dx.doi.org/10.1155/2023/3775614
work_keys_str_mv AT zhenyuliu algorithmcomparisonandevaluationofganmodelsbasedonimagetransferringfromdeserttogreenfield
AT hongjunli algorithmcomparisonandevaluationofganmodelsbasedonimagetransferringfromdeserttogreenfield