Contrastive Semi-Supervised Learning for Underwater Image Restoration via Reliable Bank
Xidian University · McMaster University
Abstract
Despite the remarkable achievement of recent underwater image restoration techniques, the lack of labeled data has become a major hurdle for further progress. In this work, we propose a mean-teacher based Semi-supervised Underwater Image Restoration (Semi-UIR) framework to incorporate the unlabeled data into network training. However, the naive mean-teacher method suffers from two main problems: (1) The consistency loss used in training might become ineffective when the teacher's prediction is wrong. (2) Using L1 distance may cause the network to overfit wrong labels, resulting in confirmation bias. To address the above problems, we first introduce a reliable bank to store the “best-ever” outputs as pseudo…
Citation impact
- FWCI
- 25.33
- Percentile
- 100%
- References
- 62
Authors
5Topics & keywords
- Computer science
- Underwater
- Artificial intelligence
- Image restoration
- Computer vision
- Image (mathematics)
- Image processing
- Geology