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基于新的风格损失函数与亮度信息的图像风格迁移算法
引用本文:谭永前,曾凡菊. 基于新的风格损失函数与亮度信息的图像风格迁移算法[J]. 光电子.激光, 2021, 32(8): 879-887
作者姓名:谭永前  曾凡菊
作者单位:凯里学院大数据工程学院,贵州凯里556011;凯里学院大数据工程学院,贵州凯里556011;重庆大学光电工程学院,重庆400044
基金项目:贵州省教育厅青年科技人才成长项目(黔教合KY字[2017]335)和“贵州省区域内一流 建设培育科·民族学”专项课题 (XLXKJS0071)和国家自然科学基金(11464023)资助项目 (1.凯里学院大数据工程学院,贵州 凯里 556011; 2.重庆大学 光电工程学院,重庆 400044)
摘    要:针对传统图像风格化处理算法在进行图像风格化处理过程中,出现颜色信息丢失、笔 触细节错乱以及边缘线条扭曲等情况,本文基于卷积神经网络的图像风格迁移算法进行了改 进,通过综合考虑图像的亮度颜色信息特性,提出一种基于新的风格损失函数与亮度信息的 图像风格迁移算法。首先,将内容图像进行色彩空间转换,让风格转移单独在亮度通道上进 行,保留了内容图像的色彩信息。其次,把直方图损失加入到总的损失函数中,构造新的总 损失函数,提高了风格化图像的稳定性。最后,把提取的内容图像边缘信息叠加到结果图中 , 达到改善风格化结果图边缘信息模糊不清的目的。实验表明,改进后的方法在笔触细节、纹 理结构以及色彩空间上有更好的整体效果表现。

关 键 词:卷积神经网络  边缘信息  亮度信息  风格化处理
收稿时间:2021-01-15

Image style transfer algorithm based on new style loss function and brightness information
TAN Yongqian and ZENG Fanju. Image style transfer algorithm based on new style loss function and brightness information[J]. Journal of Optoelectronics·laser, 2021, 32(8): 879-887
Authors:TAN Yongqian and ZENG Fanju
Affiliation:School of Large data Engineering,Kaili University,Kaili,Guizhou 556011,China and School of Large data Engineering,Kaili University,Kaili,Guizhou 556011,China ;School of Optoelectronic Engineering,Chongqing University,Chongqing 400044,China
Abstract:In view of the loss of color information,disordered stroke details,an d distortion of edge lines in the traditional image stylization processing algorithm,this paper improves the image style transfer algorithm based on convolutional neural network,and comprehensiv e consideration of image brightness and color information characteristics.This paper proposes a n image style transfer algorithm based on a new style loss function and brightness information .First,the content image is converted into the color space,and the style transfer is performed on the brightness channel alone,retaining the color information of the content image.Second,the histogram loss is added to the total loss function to construct a new total loss function,which i mproves the stability of the stylized image.Final,the edge information of the extracted content imag e is superimposed on the result image to achieve the purpose of improving the vagueness of the edg e information of the stylized result image.Experiments show that the improved method has better overall performance in stroke details,texture structure and color space.
Keywords:convolutional neural network   edge information   brightness information   stylizat ion processing
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