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Human face super-resolution method and device based on layered multi-scale residual fusion network

A fusion network and super-resolution technology, applied in the field of face image super-resolution, can solve the problem of ignoring the full utilization of face LR image features and so on.

Active Publication Date: 2020-11-10
WUHAN INSTITUTE OF TECHNOLOGY
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  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

However, most of the existing face SR methods blindly increase the network depth in order to improve network performance, while ignoring the full utilization of face LR image features.

Method used

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  • Human face super-resolution method and device based on layered multi-scale residual fusion network
  • Human face super-resolution method and device based on layered multi-scale residual fusion network
  • Human face super-resolution method and device based on layered multi-scale residual fusion network

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Embodiment 1

[0039] The present invention proposes a face super-resolution method based on a layered multi-scale residual fusion network. The face image super-resolution method uses a bottleneck attention module to obtain fine face features. Then a multi-scale residual module is used to extract the hierarchical structure information, and through the effective fusion of the extracted hierarchical structure information, better visual effects can be obtained.

[0040]figure 1 It is a schematic flow chart of a multi-scale residual fusion network face super-resolution method provided by an embodiment of the present invention, as shown in figure 2 As shown, the overall network structure of a face super-resolution method based on a layered multi-scale residual fusion network proposed by the present invention, through the convolution layer (Convolution Layer), bottleneck attention module (Bottleneck Attention Module), multi-scale Multi-scale Residual Module, Hierarchical Feature Fusion Layer and ...

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Abstract

The invention discloses a human face super-resolution method and device based on a layered multi-scale residual fusion network, and belongs to the field of human face image super-resolution, and the method comprises the steps: downsampling a high-resolution human face image to a target low-resolution human face image, partitioning the target low-resolution image to acquire overlapped image blocksafter partitioning of the overlapped image blocks; extracting a fine facial feature map by using a bottleneck attention module; sending the extracted fine facial feature map to a multi-scale residualerror module, extracting feature information by using different convolution layers in the multi-scale residual error module to share feature information by using a cross mode, and achieve multi-scalefeature information fusion by using a jump connection mode outside the multi-scale residual error module so as to more effectively improve SR performance; and updating a feature map of the target low-resolution face image through feature fusion to generate a high-resolution result. The network provided by the invention is superior to other latest face image super-resolution algorithms, and a faceimage with higher quality can be generated.

Description

technical field [0001] The invention belongs to the technical field of face image super-resolution, and more specifically relates to a face super-resolution method and device based on a layered multi-scale residual fusion network. Background technique [0002] Face super-resolution (Super-Resolution, SR) is a technology that infers potential high-resolution (High Resolution, HR) images from input low-resolution (Low Resolution, LR) face images, which can significantly enhance Detailed information of LR face images. Therefore, it is widely used in face recognition, criminal investigation, entertainment and other fields. [0003] Although face SR is also classified as natural image SR, most natural image based deep learning SR methods are not suitable for this case. Since the face structure has many prior knowledge different from natural images, natural image SR methods cannot fully utilize the unique prior information of face images, which makes the face SR task different f...

Claims

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Application Information

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IPC IPC(8): G06T3/40G06K9/62G06N3/04G06N3/08
CPCG06T3/4053G06N3/08G06N3/045G06F18/253
Inventor 卢涛王宇张彦铎吴云韬陈灯
Owner WUHAN INSTITUTE OF TECHNOLOGY
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