Abstract

To solve the challenge of single-channel blind image separation (BIS) caused by unknown prior knowledge during the separation process, we propose a BIS method based on cascaded generative adversarial networks (GANs). To ensure that the proposed method can perform well in different scenarios and to address the problem of an insufficient number of training samples, a synthetic network is added to the separation network. This method is composed of two GANs: a U-shaped GAN (UGAN), which is used to learn image synthesis, and a pixel-to-attention GAN (PAGAN), which is used to learn image separation. The two networks jointly complete the task of image separation. UGAN uses the unpaired mixed image and the unmixed image to learn the mixing style, thereby generating an image with the “true” mixing characteristics which addresses the problem of an insufficient number of training samples for the PAGAN. A self-attention mechanism is added to the PAGAN to quickly extract important features from the image data. The experimental results show that the proposed method achieves good results on both synthetic image datasets and real remote sensing image datasets. Moreover, it can be used for image separation in different scenarios which lack prior knowledge and training samples.

Highlights

  • Any image that is disturbed or polluted can be regarded as the superposition of two unknown types of source information

  • The natural image, the remote sensing image contains more detailed verse mixing contained in these datasets

  • The uncertainty of cloud distribution, thickness, and oth formation conformed to the characteristics of the blind images [31,32]

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Summary

Method Based on Cascade Generative

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Introduction
Overall Architecture
Experiments
Evaluation Indices
Datasets
Experimental Results the Natural
Results
Results of the Remote
Experimental
Results theimage dataset for image
Discussion
Full Text
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