Single image super-resolution method based on reversible network

A super-resolution and super-resolution reconstruction technology, which is applied in image analysis, image data processing, graphics and image conversion, etc. effect, inability to use the mutual information of two images more effectively, etc.

Active Publication Date: 2019-07-26
JIANGNAN UNIV
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Problems solved by technology

[0005] In order to solve the problem that the current existing technology does not utilize the interdependence between the low-resolution image and the high-resolution image, and cannot use the mutual information between the two images more effectively, thus affecting the effect of model image super-resolution, The present invention provides a single image super-resolution method based on a reversible network. The method uses a reversible network to construct a network model for super-resolution, and then inputs a low-resolution image to one end

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  • Single image super-resolution method based on reversible network

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Embodiment 1

[0071] This embodiment provides a single image super-resolution method, referring to figure 1 , the specific implementation steps of the present invention include as follows:

[0072]Step 1. Select training data set D: select a data set D for training the network model, the data set needs to include multiple low-resolution images of size W×H×C and the corresponding size is rW×rH×C A high-resolution image of , where W, H, and C are the width, height, and number of channels of the image, respectively, and r is the super-resolution factor;

[0073] Deep learning requires that the more samples in the training data set, the better, and the more the effect, the better. In this embodiment, an empirical reference value is increased, and the training data set D contains at least 4000 images that meet the above requirements.

[0074] Step 2. Establish a reversible module: the reversible module consists of 1×1 reversible convolutional layers at both ends and an affine coupling layer in ...

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Abstract

The invention discloses a single image super-resolution method based on a reversible network, and belongs to the field of image processing. According to the method, a network structure of a super-resolution model is constructed by introducing a reversible network; mutual mapping of a high-resolution image space and a low-resolution image space is realized by utilizing the reversible property of areversible network; the super-resolution process is optimized in the low-resolution direction and the high-resolution direction, the problem that other super-resolution methods based on deep learningcannot effectively utilize the mutual dependence between high-resolution images and low-resolution images is solved, and therefore the image super-resolution capability of the model is improved. A weight matrix of the 1 * 1 reversible convolution layer is initialized by introducing singular value decomposition, so that the propagation speed of the inverse process of the 1 * 1 reversible convolution layer is increased; by the adoption of the method, the super-resolution process of a single image can be effectively achieved, and the super-resolution image with good texture details and visual effects is generated through the low-resolution image.

Description

technical field [0001] The invention relates to a single image super-resolution method based on a reversible network, belonging to the field of image processing. Background technique [0002] Image Super Resolution refers to recovering a high-resolution image from a low-resolution image or image sequence. Single image super resolution (SISR) is to establish a mapping between low-resolution images and high-resolution images, and generate super-resolution images from input low-resolution images. Current super-resolution methods mainly include interpolation-based, reconstruction-based, and learning-based methods. Common interpolation methods include bilinear interpolation, bicubic interpolation methods, etc., but the reconstructed image obtained by interpolation is prone to blur, jagged, and lacks texture details. The reconstruction-based method uses the low-resolution image as a constraint and combines the prior knowledge of the image to reconstruct and restore, such as iter...

Claims

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Application Information

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IPC IPC(8): G06T3/00G06T3/40G06T7/40G06N3/04
CPCG06T3/4053G06T3/0006G06T3/4038G06T7/40G06N3/045
Inventor 江明羊洁明葛洪伟王双喜
Owner JIANGNAN UNIV
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