多尺度残差通道注意机制下的人脸超分辨率网络
Multi-Scale Residual Channel Attention Network for Face Super-Resolution
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摘要: 针对当前人脸超分辨率算法中存在效率不高和重建失真等问题,提出一种基于多尺度残差通道注意机制的人脸超分辨率网络.该网络采用多尺度递进形式的结构,能够同时处理不同的上采样因子.同时,为了解决冗余和无效信息给网络造成的影响,在网络的特征重建模块中引入了通道注意力机制,并融合人脸解析信息提出一种残差通道注意块,不仅提高了网络特征利用率还加强了人脸先验的约束力度.与现有算法在Helen, CelebA和LFW数据集上进行的实验结果表明,该算法无论是主观视觉质量,还是峰值信噪比和结构相似性等客观评价指标,都明显优于现有其他算法.Abstract: To address the problem of low efficiency and reconstruction distortion in current face super-resolution algorithms,a multi-scale residual channel attention network(MSRCAN)is proposed.The network can simultaneously process different upscale factors with a multi-scale progressive structure.Meanwhile,in order to reduce the impact of redundant and invalid features on the network,channel attention mechanism is introduced in the feature reconstruction module of the network,and a novel residual channel attention block is proposed based on face parsing maps,which not only improves the utilization rate of network features but also strengthens the constraints of facial priori.The proposed algorithm is compared with other algorithms in Helen,CelebA and LFW datasets.Extensive experiments show that the proposed algorithm is superior to other existing algorithms,both in subjective visual quality and objective evaluation index such as peak signal-to-noise ratio(PSNR)and structural similarity index(SSIM).