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High-resolution SAR ship image generation method based on generative adversarial network

A ship image, high-resolution technology, applied in the field of high-resolution SAR ship image generation based on generative confrontation network, can solve the problems of complex calculation process, expensive SAR images, and difficulty in generating images of different scales, and achieve stable network training process, the effect of improving the quality of the generated image

Active Publication Date: 2020-12-25
AEROSPACE INFORMATION RES INST CAS
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  • Summary
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AI Technical Summary

Problems solved by technology

However, acquiring a large number of manually annotated SAR images at different scales is an expensive and time-consuming task
SAR image simulation is the main means to solve the shortage of high-resolution SAR data, while traditional methods based on physical simulation models, such as Kirchhoff physical optics method, geometrical optics approximation, integral equation method or Phong model, etc. Huge memory, high cost
In this case, the image generation algorithm based on generative confrontation network (GAN) can generate realistic and multi-modal sample images, and has the advantages of low loss and end-to-end, but there are still the following shortcomings: only low-resolution SAR can be generated The goal is not to generate SAR images of multiple scales; the gradient update is unstable during the generation process, and training collapse often occurs; the generated SAR samples are only qualitatively evaluated visually, and the potential of generating SAR samples cannot be evaluated in other scenarios
[0003] When the original assisted generative confrontation network (ACGAN) generates high-resolution images, training collapses due to unstable network gradient updates
When the discriminator is overtrained, the generator tends to have gradient disappearance, which makes it difficult to reduce the loss of the generator.
And when the discriminator is undertrained, the generator will experience unstable gradient updates.
Therefore, the original ACGAN is difficult to train, and often needs to constantly adjust the parameters to find the optimal solution
At the same time, in the original ACGAN generation process, no constraints were added to the images of different scales generated in the middle, making it difficult to generate images of different scales
If you want to generate images of multiple scales, you need to change the network structure and retrain, which greatly increases the consumption of computing resources

Method used

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  • High-resolution SAR ship image generation method based on generative adversarial network
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  • High-resolution SAR ship image generation method based on generative adversarial network

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[0048] In order to enable those skilled in the art to better understand the technical solutions of the present disclosure, the present disclosure will be described in detail below in conjunction with the accompanying drawings and specific embodiments. Embodiments of the present disclosure will be described in further detail below in conjunction with the accompanying drawings and specific embodiments, but are not intended to limit the present disclosure. For the various steps described herein, if there is no need for a contextual relationship between each other, the order described herein as an example should not be considered as a limitation, and those skilled in the art will know that the order can be adjusted, as long as It is enough not to destroy the logic between them so that the whole process cannot be realized.

[0049] The specific embodiments of the present invention are described below so that those skilled in the art can understand the present invention, but it shou...

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Abstract

The invention relates to a high-resolution SAR image generation method based on a generative adversarial network. The method comprises the steps of firstly, establishing a multi-scale SAR ship image data set, sampling slices with the real image size of 256*256 to different resolutions through a down-sampling layer, and establishing a network structure of the generative adversarial network; takingthe training set of the SAR ship images as input, iterating the training model for multiple times, optimizing a target function, and testing the SAR ship images on the test set to obtain a convergentgenerative adversarial network; and finally, taking the noise and the ship category vector as input of a generator, and inputting into the convergent generative adversarial network to obtain a corresponding high-resolution SAR ship image. According to the method, a local response normalization layer is added in the generator, a network training process is stabilized, a multi-scale loss item is added, images generated in different scales are input into a discriminator, losses in different scales are calculated and finally added globally, and the quality of SAR images generated in different scales is improved.

Description

technical field [0001] The invention belongs to the technical field of high-resolution SAR image generation, and in particular relates to a high-resolution SAR ship image generation method based on a generative confrontation network. Background technique [0002] High-resolution SAR images have rich texture feature information and are not affected by clouds and rain. They are widely used in the field of remote sensing target recognition, especially in marine target recognition under extreme conditions of cloud and rain, such as ship recognition. Recently, deep learning object detection algorithms have been widely used, completely affecting the field of SAR image processing, such as the field of SAR ship recognition, but this is mainly due to the large-scale annotated training data sets of different scales. However, acquiring a large number of manually annotated SAR images of different scales is an expensive and time-consuming task. SAR image simulation is the main means to ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/00G06K9/62G06T11/00G06N3/04
CPCG06T11/001G06V20/13G06N3/045G06F18/214G06F18/241
Inventor 许璐邹丽川张红王超
Owner AEROSPACE INFORMATION RES INST CAS
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