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首页> 外文期刊>Journal of visual communication & image representation >Unsupervised self-attention lightweight photo-to-sketch synthesis with feature maps
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Unsupervised self-attention lightweight photo-to-sketch synthesis with feature maps

机译:基于特征图的无监督自注意力轻量级照片到素描合成

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摘要

Face-sketch synthesis is important for gaining a clear portrait photo of suspects when solving crimes. Recent research has made a great process in self-attention generative adversarial networks. We propose a method of unsupervised learning in the synthesis of face sketch-to-photo using a new attention module. The method of processing on a small reference set of photo-sketch pairs adds to the attention module, a focus on the regions distinguishing photos from sketches on the basis of the feature maps obtained by the auxiliary classifier. Unlike previous attention-based methods, which cannot handle the geometric changes between domains, our model can translate images requiring holistic changes. At the same time, we reduce the layers of the discriminator according to different residual layers to optimize our network. With the proposed approach, we can train our networks using a small reference set of photo-sketch pairs together with a large number of face-photo datasets and more distinguishing facial-feature regions in the self-attention model. Experiments have shown the superiority of the proposed method to existing face sketch-to-photo synthesis models using fixed network architectures and hyper-parameters.
机译:在破案时,面部素描合成对于获得清晰的嫌疑人肖像照片非常重要。最近的研究在自我注意力生成对抗网络中取得了一个很好的进展。我们提出了一种使用新注意力模块合成人脸素描到照片的无监督学习方法。对一小组照片-草图对参考集进行处理的方法增加了注意力模块,即根据辅助分类器获得的特征图,重点关注区分照片和草图的区域。与以前无法处理域之间的几何变化的基于注意力的方法不同,我们的模型可以转换需要整体变化的图像。同时,我们根据不同的残差层对判别器的层数进行减小,以优化我们的网络。通过所提出的方法,我们可以使用一小群照片-素描对的参考集以及大量的人脸-照片数据集和自注意力模型中更具区别性的面部特征区域来训练我们的网络。实验表明,所提方法优于现有的固定网络架构和超参数的人脸素描到照片合成模型。

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