A Robust Deep Neural Network Approach for Ultrafast Ultrasound Imaging using Single Angle Plane Wave

Mohammad Wasih, M. Almekkawy
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引用次数: 2

Abstract

Recently, deep learning-based methods have been proposed to reconstruct high-quality images from a single plane wave ultrasound data. A major problem with these methods is that they train the underlying network indiscriminately of the plane wave angle. This poses computational problems during training, as many plane waves at different angles must be mapped to a common ground-truth or reference image. To alleviate this problem, we propose a linear data transformation technique which reduces the intra-data variance among ultrasound Radio Frequency (RF) data at different angles. We further design a convolutional neural network, denoted by “PWNet” which is trained using the transformed data to learn pixel weights for enhancing the image quality of the single plane wave delay and sum method. The results obtained on the experimental and simulated Plane-wave Imaging Challenge in Medical UltraSound data demonstrate the accuracy of our proposed method which would be beneficial for applications requiring high-quality images reconstructed at higher frame rates.
基于单角平面波的超快超声成像鲁棒深度神经网络方法
最近,人们提出了基于深度学习的方法来从单个平面波超声数据中重建高质量的图像。这些方法的一个主要问题是它们不加区分地训练了平面波角的底层网络。这在训练过程中带来了计算问题,因为许多不同角度的平面波必须映射到一个共同的地基真值或参考图像。为了解决这个问题,我们提出了一种线性数据变换技术,该技术可以减少不同角度的超声射频数据之间的数据内方差。我们进一步设计了一个卷积神经网络,记作“PWNet”,该网络使用变换后的数据进行训练,学习像素权重,以提高单平面波延迟和求和方法的图像质量。在医学超声数据中的平面波成像挑战的实验和模拟结果表明,我们提出的方法是准确的,这将有利于在需要高帧率重建高质量图像的应用。
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