Deep Learning-Based Noise Removal from Low-Resolution Medical Images
Keywords:
medical image denoising; low resolution; self-supervised learning; blind-spot networks; Poisson–Gaussian noise; Rician noise; speckle noise; UNet; attention; Noise2VoidAbstract
Medical images acquired under low-dose, short-exposure, or portable settings often suffer from strong noise and reduced spatial resolution, which complicate diagnosis and downstream computer-aided tasks. Traditional denoising requires accurate noise models or clean targets and tends to over-smooth subtle anatomical structures. This manuscript presents a comprehensive methodology for deep learning–based noise removal tailored to low-resolution (LR) medical images. We formulate the problem as joint noise suppression and detail preservation under modality-aware noise (Poisson–Gaussian for CT, Rician for MRI, and multiplicative speckle for ultrasound). We propose DUAL-NET, a dual-branch, multi-scale architecture that couples a noise-estimation branch (blind-spot + confidence-guided attention) with a structure-restoration branch (residual UNet with hybrid self-/cross-attention). The training scheme blends supervised learning on synthetically corrupted data with self-supervised fine-tuning (Noise2Self/Noise2Void-style masking) on real clinical LR scans.
A rigorous evaluation plan uses PSNR, SSIM, RMSE, and downstream task fidelity (segmentation Dice), accompanied by paired statistical testing. In simulation studies across MRI, CT, and ultrasound subsets, DUAL-NET improved PSNR by ~2.1–3.8 dB and SSIM by 0.015–0.042 over strong classical (BM3D) and CNN baselines (DnCNN), while preserving edges needed for delineating lesions and vessels. We analyze failure cases, robustness to noise mis-specification, and computational overhead, and outline pathways for deployment under privacy, reproducibility, and A/B validation constraints. The results indicate that modern denoising with uncertainty-aware attention and self-supervised adaptation can materially enhance clinical image quality even when only low-resolution, noisy data are available.
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Articles are published under the Creative Commons Attribution NonCommercial 4.0 License (CC BY NC 4.0), allowing others to distribute, remix, adapt, and build upon the work for non-commercial purposes while crediting the original author.
