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用于手持超声图像的盲超分辨率:基于两阶段退化的无配对深度学习。

Blind super-resolution for handheld ultrasound image: Two-stage degradation based unpaired deep learning.

作者信息

Jiang Zhencun, Ren Kangrui, Wang Kefan, Wang Zhongjie

机构信息

Shanghai Research Institute for Intelligent Autonomous Systems, Tongji University, Shanghai 200092, China.

Department of Control Science and Engineering, College of Electronics and Information Engineering, Tongji University, Shanghai 201804, China.

出版信息

Comput Methods Programs Biomed. 2025 Oct;270:108956. doi: 10.1016/j.cmpb.2025.108956. Epub 2025 Jul 7.

Abstract

BACKGROUND AND OBJECTIVE

Handheld ultrasound devices are widely used in clinical diagnostics and examinations due to their portability. However, their imaging quality is often inferior to that of large-scale ultrasound devices due to hardware limitations.

METHODS

To enhance the image quality of handheld ultrasound devices, a blind super-resolution method based on two-stage degradation is proposed. The first degradation stage, referred to as frequency probabilistic degradation, is designed to mitigate the structural distortion and texture loss commonly introduced by general probabilistic degradation. In this stage, high-quality ultrasound images acquired from large-scale ultrasound devices are decomposed into high-frequency and low-frequency components using wavelet transform. These two components are respectively processed with blur kernels and noise, both generated by neural networks, and then recombined to produce synthetic images. In the second degradation stage, Gaussian blur kernels and speckle noise are randomly generated and applied to the synthetic images, further degrading their quality and enhancing the diversity of the training samples. Additionally, recognizing that the general perceptual loss function is insufficient to capture the unique characteristics of ultrasound images, a new ultrasound perceptual loss function is introduced.

RESULTS

Eventually, supervised learning is performed using the EDSR model on the synthetic images after two-stage degradation and high-quality images, and blind super-resolution of low-quality ultrasound images is realized.

CONCLUSION

Experiments are carried out on public datasets to demonstrate the proposed method, the experimental results show that the proposed method outperforms state-of-the-art techniques in terms of image quality improvement.

摘要

背景与目的

手持式超声设备因其便携性而广泛应用于临床诊断和检查。然而,由于硬件限制,其成像质量往往低于大型超声设备。

方法

为提高手持式超声设备的图像质量,提出一种基于两阶段退化的盲超分辨率方法。第一阶段退化,即频率概率退化,旨在减轻一般概率退化通常引入的结构失真和纹理损失。在此阶段,利用小波变换将从大型超声设备获取的高质量超声图像分解为高频和低频分量。这两个分量分别用由神经网络生成的模糊核和噪声进行处理,然后重新组合以生成合成图像。在第二阶段退化中,随机生成高斯模糊核和斑点噪声并应用于合成图像,进一步降低其质量并增加训练样本的多样性。此外,认识到一般感知损失函数不足以捕捉超声图像的独特特征,引入了一种新的超声感知损失函数。

结果

最终,使用EDSR模型对经过两阶段退化后的合成图像和高质量图像进行监督学习,实现了低质量超声图像的盲超分辨率。

结论

在公共数据集上进行实验以验证所提出的方法,实验结果表明,在图像质量提升方面,所提出的方法优于现有技术。

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