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Generating Cartoon Images from Face Photos with Cycle-Consistent Adversarial Networks 被引量:1
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作者 Tao Zhang Zhanjie Zhang +2 位作者 Wenjing Jia Xiangjian He Jie Yang 《Computers, Materials & Continua》 SCIE EI 2021年第11期2733-2747,共15页
The generative adversarial network(GAN)is first proposed in 2014,and this kind of network model is machine learning systems that can learn to measure a given distribution of data,one of the most important applications... The generative adversarial network(GAN)is first proposed in 2014,and this kind of network model is machine learning systems that can learn to measure a given distribution of data,one of the most important applications is style transfer.Style transfer is a class of vision and graphics problems where the goal is to learn the mapping between an input image and an output image.CYCLE-GAN is a classic GAN model,which has a wide range of scenarios in style transfer.Considering its unsupervised learning characteristics,the mapping is easy to be learned between an input image and an output image.However,it is difficult for CYCLE-GAN to converge and generate high-quality images.In order to solve this problem,spectral normalization is introduced into each convolutional kernel of the discriminator.Every convolutional kernel reaches Lipschitz stability constraint with adding spectral normalization and the value of the convolutional kernel is limited to[0,1],which promotes the training process of the proposed model.Besides,we use pretrained model(VGG16)to control the loss of image content in the position of l1 regularization.To avoid overfitting,l1 regularization term and l2 regularization term are both used in the object loss function.In terms of Frechet Inception Distance(FID)score evaluation,our proposed model achieves outstanding performance and preserves more discriminative features.Experimental results show that the proposed model converges faster and achieves better FID scores than the state of the art. 展开更多
关键词 Generative adversarial network spectral normalization lipschitz stability constraint VGG16 l1 regularization term l2 regularization term Frechet inception distance
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基于自相似性和加权梯度的遥感图像融合算法 被引量:2
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作者 方帅 余楚平 《合肥工业大学学报(自然科学版)》 CAS 北大核心 2020年第4期468-473,506,共7页
文章提出一种基于图像自相似性、加权梯度以及对于图像的L1/2梯度先验下的遥感图像融合框架,利用图像在不同尺度间的自相似性特征,寻找图像的相似块,通过相似块的高频细节来丰富多光谱图像的细节信息,使得最终的图像能够保持较好的光谱... 文章提出一种基于图像自相似性、加权梯度以及对于图像的L1/2梯度先验下的遥感图像融合框架,利用图像在不同尺度间的自相似性特征,寻找图像的相似块,通过相似块的高频细节来丰富多光谱图像的细节信息,使得最终的图像能够保持较好的光谱信息,通过加权梯度向融合图像中注入适量细节信息,避免由于注入的比例问题导致融合图像空间信息的差异,利用对图像梯度的L1/2梯度约束来约束最终融合图像的梯度分布;同时在每一层利用目标融合函数对多光谱和全色图像进行融合,通过尺度的迭代,使得最终的融合图像不仅能够保持自相似性图像中的光谱信息,还能够保证最终融合图像与全色图像间梯度的一致性和各通道差异性。实验结果表明,该文算法在主观视觉和客观评价标准上均优于其他算法。 展开更多
关键词 图像自相似性 加权梯度 l1/2梯度约束 分层融合 遥感图像融合
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