Invention Grant
- Patent Title: Learning method of generative adversarial network with multiple generators for image denoising
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Application No.: US17288933Application Date: 2020-09-29
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Publication No.: US11308587B2Publication Date: 2022-04-19
- Inventor: Songwen Pei , Jing Fan
- Applicant: UNIVERSITY OF SHANGHAI FOR SCIENCE AND TECHNOLOGY , YUNWU NETLINK (SUZHOU) INTELLIGENT TECHNOLOGY CO., LTD
- Applicant Address: CN Shanghai; CN Suzhou
- Assignee: UNIVERSITY OF SHANGHAI FOR SCIENCE AND TECHNOLOGY,YUNWU NETLINK (SUZHOU) INTELLIGENT TECHNOLOGY CO., LTD
- Current Assignee: UNIVERSITY OF SHANGHAI FOR SCIENCE AND TECHNOLOGY,YUNWU NETLINK (SUZHOU) INTELLIGENT TECHNOLOGY CO., LTD
- Current Assignee Address: CN Shanghai; CN Suzhou
- Agency: Zhu Lehnoff LLP
- Priority: CN201911012057.2 20191023
- International Application: PCT/CN2020/118697 WO 20200929
- International Announcement: WO2021/077997 WO 20210429
- Main IPC: G06T5/00
- IPC: G06T5/00 ; G06N3/04

Abstract:
The present invention relates to a learning method of generative adversarial network (GAN) with multiple generators for image denoising, and provides a generative adversarial network with three generators. Such generators are used for removing Poisson noise, Gaussian blur noise and distortion noise respectively to improve the quality of low-dose CT (LDCT) images; the generators adopt the residual network structure. The mapped short connection used in the residual network can avoid the vanishing gradient problem in a deep neural network and accelerate the network training; the training of GAN is always a difficult problem due to the unreasonable measure between the generative distribution and real distribution. The present invention can stabilize training and enhance the robustness of training models by limiting the spectral norm of a weight matrix.
Public/Granted literature
- US20220092742A1 Learning Method of Generative Adversarial Network with Multiple Generators for Image Denoising Public/Granted day:2022-03-24
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