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📄 Abstract
Abstract: Optical Coherence Tomography (OCT) is a vital imaging modality for diagnosing
and monitoring retinal diseases. However, OCT images are inherently degraded by
speckle noise, which obscures fine details and hinders accurate interpretation.
While numerous denoising methods exist, many struggle to balance noise
reduction with the preservation of crucial anatomical structures. This paper
introduces GARD (Gamma-based Anatomical Restoration and Denoising), a novel
deep learning approach for OCT image despeckling that leverages the strengths
of diffusion probabilistic models. Unlike conventional diffusion models that
assume Gaussian noise, GARD employs a Denoising Diffusion Gamma Model to more
accurately reflect the statistical properties of speckle. Furthermore, we
introduce a Noise-Reduced Fidelity Term that utilizes a pre-processed,
less-noisy image to guide the denoising process. This crucial addition prevents
the reintroduction of high-frequency noise. We accelerate the inference process
by adapting the Denoising Diffusion Implicit Model framework to our Gamma-based
model. Experiments on a dataset with paired noisy and less-noisy OCT B-scans
demonstrate that GARD significantly outperforms traditional denoising methods
and state-of-the-art deep learning models in terms of PSNR, SSIM, and MSE.
Qualitative results confirm that GARD produces sharper edges and better
preserves fine anatomical details.