Research Library

open-access-imgOpen AccessSemi-supervised Speckle Noise Reduction in OCT Images with UNet and Swin-Uformer
Author(s)
Yupei Chen,
Jiaxiong Li,
Zhongzhou Luo,
Keyi Fei,
Yan Luo,
Zhengyu Duan,
Jin Yuan,
Peng Xiao
Publication year2024
Publication title
ieee transactions on instrumentation and measurement
Resource typeMagazines
PublisherIEEE
Speckle noise is the main cause for quality degradation of Optical Coherence Tomography (OCT) images. However, speckle noise reduction is challenging due to the complex cause for statistically modelling and the requirement of a large amount of annotated data for conventional supervised learning strategies. In this paper, a novel semi-supervised learning method is proposed for speckle noise reduction in OCT images with limited labeled data. Our method creates pseudo labels for co-teaching in the training process between U-shaped Convolutional Neural Network and U-shaped Transformer with shifted window to preserve both global information and local details. The proposed scheme encourages the consistency between different streams when the advantages of both are leveraged to compensate each other for better convergence. It shows robustness on both normal and pathological OCT images with different diseases and from different devices. Our method exhibits advantages over several other state-of-the-art methods on speckle noise reduction. To our knowledge, this work is the first attempt to combine convolutional networks and Transformer for semi-supervised speckle noise reduction and achieves promising results on different datasets.
Subject(s)components, circuits, devices and systems , power, energy and industry applications
Keyword(s)Speckle, Noise reduction, Transformers, Convolutional neural networks, Training, Optical filters, Noise measurement, Convolutional neural network, optical coherence tomography, speckle noise reduction, semi-supervised learning, transformer
Language(s)English
SCImago Journal Rank0.82
H-Index119
eISSN1557-9662
pISSN0018-9456
DOI10.1109/tim.2024.3381655

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