CVDec 15, 2023

Single PW takes a shortcut to compound PW in US imaging

arXiv:2312.09514v11 citationsh-index: 19
Originality Incremental advance
AI Analysis

This work addresses a speed bottleneck in diffusion-based ultrasound imaging, offering an incremental improvement for medical imaging applications.

The study tackled the slow sampling speed of diffusion models in ultrasound image reconstruction by using a single plane wave as a starting point instead of Gaussian noise, achieving a 60% reduction in sampling steps while maintaining comparable performance metrics.

Reconstruction of ultrasound (US) images from radio-frequency data can be conceptualized as a linear inverse problem. Traditional deep learning approaches, which aim to improve the quality of US images by directly learning priors, often encounter challenges in generalization. Recently, diffusion-based generative models have received significant attention within the research community due to their robust performance in image reconstruction tasks. However, a limitation of these models is their inherent low speed in generating image samples from pure Gaussian noise progressively. In this study, we exploit the inherent similarity between the US images reconstructed from a single plane wave (PW) and PW compounding PWC). We hypothesize that a single PW can take a shortcut to reach the diffusion trajectory of PWC, removing the need to begin with Gaussian noise. By employing an advanced diffusion model, we demonstrate its effectiveness in US image reconstruction, achieving a substantial reduction in sampling steps. In-vivo experimental results indicate that our approach can reduce sampling steps by 60%, while preserving comparable performance metrics with the conventional diffusion model.

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