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e-Article

A Novel Approach for Self-Supervised Denoising
Document Type
Conference
Source
2023 International Conference on the Cognitive Computing and Complex Data (ICCD) Cognitive Computing and Complex Data (ICCD), 2023 International Conference on the. :18-22 Oct, 2023
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Training
Visualization
Noise reduction
Neural networks
Cognitive systems
Image denoising
Blind-Spot Network
Pixel-Shuffle Down Sampling
Refinement
Self-Supervised
Language
Abstract
Amidst the swift progression of neural networks, numerous strategies have been put forward to address the issue of image denoising under the strong supervision of large-scale datasets. Leveraging self-supervised blind-spot networks to tackle spatially correlated noise in real-world scenarios presents a significant and daunting obstacle. In this paper, we introduce an innovative method for denoising based on multi-branch blind-spot network with PD-random replace refinement (MBPDR3) to overcome information loss. Extensive research has shown that the proposed method is substantially superior to other self-supervised methods, and the efficacy of the proposed approach is demonstrated through extensive experimentation, yielding superior performance on both synthetic and real datasets.