16比例系数下人脸超分辨率的高效深度关注像素网络

H. H. Aung, S. Aramvith
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引用次数: 0

摘要

目前,人脸超分辨率(FSR)模型采用了将注意力技术与超分辨率网络相结合的融合方法。提出了一种融合方法,解决了FSR问题。利用人脸属性有效地指导人脸的底层信息,实现人脸图像的鲁棒恢复。迭代技术对人脸特征值进行评价,提高了超分辨网络的重建能力。然而,FSR的网络参数很高,而学习率仍然很低。本文提出了一种结合人脸对齐网络(FAN)的注意机制。所提出的注意机制由通道注意和非局部模块组成。与其他最先进的模型相比,我们提出的模型在$\乘以16$的规模上表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Deep Attentive Pixels Network in Face Super-Resolution at Scale Factor of 16
Nowadays, Face Super-Resolution (FSR) models utilize the fusion approach, which combines the attention technique with the super-resolution network. The fusion approach has been proposed and solves the problem of FSR. Facial attributes have been effectively used to guide low-level information of the face to perform robust face image restoration. Iterative techniques appraised the value of facial landmarks to boost the reconstruction capability of the super-resolution network. Nevertheless, the network parameters in FSR are high, while the learning rate is still low. This paper proposes an attention mechanism combined with the Face Alignment Network (FAN). The proposed attention mechanism consists of channel attention and a non-local module. Our proposed model outperforms at the scale of $\times 16$ compared to the other state-of-the-art models.
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