Noise2Kernel: Adaptive Self-Supervised Blind Denoising Using a Dilated Convolutional Kernel Architectureopen access
- Authors
- Lee, Kanggeun; Jeong, Won-Ki
- Issue Date
- 6월-2022
- Publisher
- MDPI
- Keywords
- blind denoising; self-supervision; adaptive loss; J-invariant network
- Citation
- SENSORS, v.22, no.11
- Indexed
- SCIE
SCOPUS
- Journal Title
- SENSORS
- Volume
- 22
- Number
- 11
- URI
- https://scholar.korea.ac.kr/handle/2021.sw.korea/143004
- DOI
- 10.3390/s22114255
- ISSN
- 1424-8220
- Abstract
- With the advent of unsupervised learning, efficient training of a deep network for image denoising without pairs of noisy and clean images has become feasible. Most current unsupervised denoising methods are built on self-supervised loss with the assumption of zero-mean noise under the signal-independent condition, which causes brightness-shifting artifacts on unconventional noise statistics (i.e., different from commonly used noise models). Moreover, most blind denoising methods require a random masking scheme for training to ensure the invariance of the denoising process. In this study, we propose a dilated convolutional network that satisfies an invariant property, allowing efficient kernel-based training without random masking. We also propose an adaptive self-supervision loss to increase the tolerance for unconventional noise, which is specifically effective in removing salt-and-pepper or hybrid noise where prior knowledge of noise statistics is not readily available. We demonstrate the efficacy of the proposed method by comparing it with state-of-the-art denoising methods using various examples.
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Collections - Graduate School > Department of Computer Science and Engineering > 1. Journal Articles
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