Neighboring Slice Noise2Noise: Self-Supervised Medical Image Denoising from Single Noisy Image Volume
Langrui Zhou, Ziteng Zhou, Xinyu Huang, Huiru Wang, Xiangyu Zhang,, Guang Li

TL;DR
This paper introduces NS-N2N, a self-supervised denoising method that leverages neighboring slices within a single noisy medical image volume, eliminating the need for clean images or noise independence assumptions.
Contribution
The novel NS-N2N approach uses neighboring slices for training, enabling high-quality denoising with only one noisy volume and outperforming existing methods.
Findings
Outperforms state-of-the-art self-supervised methods in denoising quality
Operates efficiently using only a single noisy image volume
Is applicable across various clinical imaging devices
Abstract
In the last few years, with the rapid development of deep learning technologies, supervised methods based on convolutional neural networks have greatly enhanced the performance of medical image denoising. However, these methods require large quantities of noisy-clean image pairs for training, which greatly limits their practicality. Although some researchers have attempted to train denoising networks using only single noisy images, existing self-supervised methods, including blind-spot-based and data-splitting-based methods, heavily rely on the assumption that noise is pixel-wise independent. However, this assumption often does not hold in real-world medical images. Therefore, in the field of medical imaging, there remains a lack of simple and practical denoising methods that can achieve high-quality denoising performance using only single noisy images. In this paper, we propose a novel…
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Taxonomy
TopicsImage and Signal Denoising Methods · Medical Image Segmentation Techniques · AI in cancer detection
