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Human face super-resolution algorithm based on regional depth convolution neural network

A deep convolution and super-resolution technology, applied in the field of face super-resolution algorithms, can solve the problems of not being able to make full use of the structural knowledge of face images, and the lack of expression ability of single-layer learning structures.

Pending Publication Date: 2017-04-26
WUHAN INSTITUTE OF TECHNOLOGY
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Problems solved by technology

[0006] The technical problem to be solved by the present invention is to provide a face hypersensing method based on a regional deep convolutional neural network in view of the lack of expressive ability of the single-layer learning structure in the prior art and the inability to make full use of the structural knowledge on the face image. resolution algorithm

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  • Human face super-resolution algorithm based on regional depth convolution neural network
  • Human face super-resolution algorithm based on regional depth convolution neural network
  • Human face super-resolution algorithm based on regional depth convolution neural network

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Embodiment Construction

[0061] In order to make the object, technical solution and advantages of the present invention clearer, the present invention will be further described in detail below in conjunction with the accompanying drawings and embodiments. It should be understood that the specific embodiments described here are only used to explain the present invention, not to limit the present invention.

[0062] Such as figure 1 As shown, the face super-resolution algorithm based on the regional deep convolutional neural network of the embodiment of the present invention comprises the following steps:

[0063] Training phase:

[0064] S1. Obtain the trained high-resolution face image, process it to obtain a low-resolution face image, use the sliding window to adaptively select adjacent image blocks, and divide the low-resolution face image in the pixel domain to overlap each other The image block of , get multiple local regions;

[0065] The method to process the low-resolution face image is:

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Abstract

The invention discloses a human face super-resolution algorithm based on regional depth convolution neural network. The algorithm comprises the following steps: a training stage: S1) dividing the mutually overlapping image blocks in the pixel domain of an inputted human face image with low resolution to obtain a plurality of local regions; S2) extracting the local regions for local characteristics; S3) performing non-linear change to the local characteristics to obtain non-linear characteristics; S4) processing the non-linear characteristics to obtain reconstructed image blocks with high resolution; S5) splicing the image blocks with high resolution; adjusting the multi-layer convolution layers and correcting the parameters of the linear unit layer; and a testing stage: S6) inputting the tested human face image with low resolution; processing through the super-resolution network to obtain the human face image with high resolution. The regional convolution neural network proposed by the invention improves the quality of subjective and objective reconstruction of reconstructing high resolution images.

Description

technical field [0001] The invention relates to the field of image super-resolution, in particular to a face super-resolution algorithm based on a regional deep convolutional neural network. Background technique [0002] Simon and Kanade et al. proposed a face hallucination method specifically for face images. Face hallucination is an image super-resolution that generates high-resolution face images from input low-resolution face images. rebuild method. [0003] Traditional reconstruction-based super-resolution algorithms are suitable for small magnifications. When the magnification increases, the reconstruction method cannot obtain more prior knowledge, which limits its reconstruction quality. The face super-resolution algorithm based on learning can be divided into single-layer method and multi-layer method. The single-layer method uses the local blocks of the face image to share the maximum similarity and obtain the optimal weight vector. The method is to use the deep ne...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T3/40G06N3/08
CPCG06N3/084G06T3/4053
Inventor 卢涛汪浩潘兰兰管英杰曾康利汪家明陈希彤
Owner WUHAN INSTITUTE OF TECHNOLOGY
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