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DespNet: A residual learning based deep convolutional neural network for the despeckling of optical coherence tomography images
被引:0
作者:
Arun P. S.
Varun P. Gopi
机构:
[1] National Institute of Technology Tiruchirappalli,Department of Electronics and Communication Engineering
来源:
Multimedia Tools and Applications
|
2024年
/
83卷
关键词:
Optical coherence tomography;
Speckle noise;
Convolutional neural networks;
Residual learning;
Batch normalisation;
Image denoising;
D O I:
暂无
中图分类号:
学科分类号:
摘要:
OCT (Optical Coherence Tomography) is a non-invasive diagnostic tool for detecting and treating a wide range of retinal diseases. However, the OCT image formation method produces speckle noise, degrading the quality of OCT images significantly, and these low-quality images negatively impact subsequent illness diagnosis. Traditional approaches to remove speckle noise include spatial/transform domain filtering, dictionary learning, or hybridizing these methods. By adopting a hierarchical network topology, deep Convolutional Neural Networks (CNN) have expanded the capacity to harness spatial correlations and extract data at multiple resolutions, making image denoising algorithms more robust. This paper proposes a residual learning-based despeckling CNN architecture (DespNet) for removing speckle noise from OCT images. Trained on 1440 augmented OCT images, DespNet generates the residual images that contain the detailed noise pattern of input images, which, when subtracted from noisy images, results in the denoised version. Quantitative and qualitative analyses have been done, and the experimental results show that the images despeckled using DespNet architecture substantially reduce speckle noise while preserving texture and structure that aids in retinal layer segmentation and consequent illness diagnosis.
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页码:39961 / 39981
页数:20
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