Speckle2Self: Self-Supervised Ultrasound Speckle Reduction Without Clean Data
Xuesong Li, Nassir Navab, Zhongliang Jiang

TL;DR
Speckle2Self introduces a self-supervised method for ultrasound speckle noise reduction that operates on single noisy images by leveraging multi-scale perturbations to model and suppress tissue-dependent speckle patterns.
Contribution
It presents a novel self-supervised algorithm that effectively reduces speckle noise in ultrasound images without requiring clean data or multiple observations.
Findings
Outperforms conventional filters and state-of-the-art learning methods.
Effective on simulated and real human carotid ultrasound images.
Demonstrates good generalization across different ultrasound machines.
Abstract
Image denoising is a fundamental task in computer vision, particularly in medical ultrasound (US) imaging, where speckle noise significantly degrades image quality. Although recent advancements in deep neural networks have led to substantial improvements in denoising for natural images, these methods cannot be directly applied to US speckle noise, as it is not purely random. Instead, US speckle arises from complex wave interference within the body microstructure, making it tissue-dependent. This dependency means that obtaining two independent noisy observations of the same scene, as required by pioneering Noise2Noise, is not feasible. Additionally, blind-spot networks also cannot handle US speckle noise due to its high spatial dependency. To address this challenge, we introduce Speckle2Self, a novel self-supervised algorithm for speckle reduction using only single noisy observations.…
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Taxonomy
TopicsUltrasound Imaging and Elastography · Image and Signal Denoising Methods · Phonocardiography and Auscultation Techniques
