论文标题

使用单个CNN,OT驱动的多域无监督超声伪像去除伪影

OT-driven Multi-Domain Unsupervised Ultrasound Image Artifact Removal using a Single CNN

论文作者

Huh, Jaeyoung, Khan, Shujaat, Ye, Jong Chul

论文摘要

超声成像(US)通常遭受来自各种来源的不同图像伪像。解决这些问题的经典方法通常是基于模型的迭代方法,这些方法是专门针对每种类型的工件开发的,这些方法通常在计算上是密集型的。最近,已经提出了深度学习方法作为计算高效且高性能的替代方法。不幸的是,在当前的深度学习方法中,专门的神经网络应接受每种特定伪像类型的匹配培训数据培训。这对我们的深度学习构成了基本限制,因为应该存储大量模型来处理美国各种图像文物。受到多域图像转移的最新成功的启发,我们在这里提出了一种新颖的,无监督的,深度学习的方法,在这种方法中,单个神经网络可以简单地通过更改在不同目标域之间切换的掩模向量来处理不同类型的美国伪像。我们的算法是使用最佳转运(OT)理论严格得出的,以实现级联的概率度量。使用Phantom和体内数据的实验结果表明,所提出的方法可以通过去除不同的伪影来产生高质量的图像,这些伪影与单独训练的多个神经网络获得的伪影相当。

Ultrasound imaging (US) often suffers from distinct image artifacts from various sources. Classic approaches for solving these problems are usually model-based iterative approaches that have been developed specifically for each type of artifact, which are often computationally intensive. Recently, deep learning approaches have been proposed as computationally efficient and high performance alternatives. Unfortunately, in the current deep learning approaches, a dedicated neural network should be trained with matched training data for each specific artifact type. This poses a fundamental limitation in the practical use of deep learning for US, since large number of models should be stored to deal with various US image artifacts. Inspired by the recent success of multi-domain image transfer, here we propose a novel, unsupervised, deep learning approach in which a single neural network can be used to deal with different types of US artifacts simply by changing a mask vector that switches between different target domains. Our algorithm is rigorously derived using an optimal transport (OT) theory for cascaded probability measures. Experimental results using phantom and in vivo data demonstrate that the proposed method can generate high quality image by removing distinct artifacts, which are comparable to those obtained by separately trained multiple neural networks.

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