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Efficient Face Super-Resolution Based on Separable Convolution Projection Networks

机译:基于可分卷积投影网络的高效人脸超分辨率

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Current super-resolution convolutional neural networks for application to face images generally use a feed-forward architecture. The network frames, however, tend to use deeper structures and larger quantities of parameters. These networks do not readily apply to restricted devices such as home robots or embedded devices, which limits the wide application of face super-resolution algorithms in real-world scenarios. In an effort to remedy this problem, a simple initial feature extraction is established in this study for shallow features of images; an intermediate convolutional layer with a novel deep separable convolution projection block is then used to reduce computational complexity while preserving accuracy. The proposed model can learn various up- and down- sampling information to retain high resolution details and generate deep, effective features. Integrating a dense connection operation allows reconstruction to further improve these super-resolution results. The proposed model is evaluated on the CASIA-WebFace database, to show that it outperforms other state-of-the-art algorithms.
机译:当前用于面部图像的超分辨率卷积神经网络通常使用前馈架构。但是,网络框架倾向于使用更深的结构和更大量的参数。这些网络不适用于受限设备,例如家庭机器人或嵌入式设备,这限制了人脸超分辨率算法在现实场景中的广泛应用。为了解决这个问题,在这项研究中建立了一个简单的初始特征提取来处理图像的浅层特征。然后使用具有新型深可分离卷积投影块的中间卷积层来减少计算复杂性,同时又保持精度。提出的模型可以学习各种上采样和下采样信息,以保留高分辨率的细节并生成深入有效的特征。集成密集连接操作允许重建以进一步改善这些超分辨率结果。拟议的模型在CASIA-WebFace数据库上进行了评估,表明其性能优于其他最新算法。

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