论文标题

speckle2speckle:无需清洁数据的超声斑点过滤的无监督学习

Speckle2Speckle: Unsupervised Learning of Ultrasound Speckle Filtering Without Clean Data

论文作者

Göbl, Rüdiger, Hennersperger, Christoph, Navab, Nassir

论文摘要

在超声成像中,组织的均匀区域的出现受到斑点的影响,对于某些应用,这可能会使组织不规则的检测变得困难。为了应对这一点,通常将减少斑点过滤器应用于图像是很常见的做法。大多数常规的过滤技术都是精心制作的,通常需要对当前的硬件,成像方案和应用进行精心调整。另一方面,基于学习的技术遭受了对训练的目标图像的需求(如果有完全监督的技术),或者需要在所有情况下可能不适用于的斑点外观的狭窄,复杂的基于物理的模型。通过这项工作,我们提出了一种基于深度学习的方法,用于去除斑点,而无需这些限制。为了实现这一目标,我们利用了现实的超声模拟技术,这些技术允许对代表完全相同组织的几种独立斑点实现进行实例化,从而允许应用图像重建技术,这些技术与成对损坏的数据成对一起使用。与其他两种最先进的方法(非本地均值和优化的贝叶斯非本地均值过滤器)相比,我们的方法在定性比较和定量评估中表现出色,尽管仅对模拟进行了培训,并且是几个数量级的阶数。

In ultrasound imaging the appearance of homogeneous regions of tissue is subject to speckle, which for certain applications can make the detection of tissue irregularities difficult. To cope with this, it is common practice to apply speckle reduction filters to the images. Most conventional filtering techniques are fairly hand-crafted and often need to be finely tuned to the present hardware, imaging scheme and application. Learning based techniques on the other hand suffer from the need for a target image for training (in case of fully supervised techniques) or require narrow, complex physics-based models of the speckle appearance that might not apply in all cases. With this work we propose a deep-learning based method for speckle removal without these limitations. To enable this, we make use of realistic ultrasound simulation techniques that allow for instantiation of several independent speckle realizations that represent the exact same tissue, thus allowing for the application of image reconstruction techniques that work with pairs of differently corrupted data. Compared to two other state-of-the-art approaches (non-local means and the Optimized Bayesian non-local means filter) our method performs favorably in qualitative comparisons and quantitative evaluation, despite being trained on simulations alone, and is several orders of magnitude faster.

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