Single Image based Super Resolution Ultrasound Imaging Using Residual Learning of Wavelet Features.

Adithya Sineesh, Manish Rangarajan Shankar, Abhilash Hareendranathan, Mahesh Raveendranatha Panicker, P Palanisamy
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引用次数: 0

Abstract

The generation of super resolution ultrasound images from the low-resolution (LR) brightness mode (B-mode) images acquired by the portable point of care ultrasound systems has been of sufficient interest in the recent past. With the advancements in deep learning, there have been numerous attempts in this direction. However, all the approaches have been concentrated on employing the direct image as the input to the neural network. In this work, a stationary wavelet (SWT) decomposition is employed to extract the features from the input LR image which is passed through a modified residual network and the learned features are combined using the inverse SWT to reconstruct the high resolution (HR) image at a 4× scale factor. The proposed approach when compared to the state-of-the art approaches, results in an improved high resolution reconstruction.Clinical relevance- The proposed approach will enable the generation of high-resolution images from portable ultrasound systems, allowing for easier interpretation and faster diagnostics in primary care settings.

利用小波特征的残差学习实现基于单个图像的超分辨率超声成像
从便携式医疗点超声系统获取的低分辨率(LR)亮度模式(B-mode)图像生成超分辨率超声图像的问题近年来一直备受关注。随着深度学习技术的进步,人们在这方面进行了大量尝试。然而,所有方法都集中在采用直接图像作为神经网络的输入。在这项工作中,采用了静态小波(SWT)分解从输入的 LR 图像中提取特征,然后通过修改后的残差网络,利用反向 SWT 将学习到的特征进行组合,以 4 倍比例系数重建高分辨率(HR)图像。与最先进的方法相比,所提出的方法改进了高分辨率重建。临床相关性--所提出的方法将使便携式超声系统生成高分辨率图像成为可能,从而使基层医疗机构的解释和诊断更加简便快捷。
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