An efficient super-resolution reconstruction method based on deep learning
A technology of super-resolution reconstruction and deep learning, applied in neural learning methods, instruments, biological neural network models, etc., can solve problems such as blurred high-frequency details, difficult super-resolution reconstruction, lack of high-frequency details, etc., to achieve Effects of avoiding gradient disappearance, easy training, and high reconstruction quality
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[0039] see Figure 1-6 , in a preferred embodiment of the present invention, an efficient super-resolution reconstruction method based on deep learning, comprising the following steps:
[0040] Step S1: Obtain the commonly used standard data sets for super-resolution. The standard data sets include "91-imags", "Set 5", "Set14", "BSDS100", "manga109", "DIV2K" and "Urban100". For the standard data The concentrated images are rotated, shifted, cut, and scaled to obtain an enhanced dataset.
[0041] Step S2: Read the image information, combine the low-resolution image and the high-resolution image into an information pair, and make a data set required by the network structure.
[0042] Step S3: In the network structure, the input image is subjected to two-branch processing; among them, the first branch uses the nearest neighbor interpolation method to enlarge the low-resolution image to the target size to form an interpolated and up-sampled image, and then proceed to step S8 for ...
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Application Information
- IPC
- G06T3/40; G06N3/08
- CPC
- G06T3/4046; G06T3/4076; G06T3/4023; G06N3/084
- Inventors
- 黎海生; 鲁健恒



