高质量超声成像的问题表述、高效建模和深度神经网络:特邀报告

Dimitris Perdios, Adrien Besson, Florian Martinez, Manuel Vonlanthen, M. Arditi, J. Thiran
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引用次数: 4

摘要

最近,许多脉冲回波超声成像方法依赖于非聚焦波前的传输。这种策略允许以降低图像质量为代价获得非常高的帧速率。在这项工作中,我们提出了一种正则化反问题方法和物理测量过程的高效建模,以从未聚焦的波前重建高质量的美国图像。我们将其与深度神经网络(DNN)方法在医学超声(PICMUS)中的平面波成像挑战进行比较,并表明使用精心设计和训练的DNN可以克服标准图像处理先验的局限性,这些先验无法准确捕获美国图像的非常具体的性质。
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On Problem Formulation, Efficient Modeling and Deep Neural Networks for High-Quality Ultrasound Imaging : Invited Presentation
Recently, many pulse-echo ultrasound (US) imaging methods have relied on the transmission of unfocused wavefronts. Such a strategy allows for very high frame rates at the cost of a degraded image quality. In this work, we present a regularized inverse problem approach and a highly efficient modeling of the physical measurement process to reconstruct high-quality US images from unfocused wavefronts. We compare it against a deep neural network (DNN) approach on the plane wave imaging challenge in medical ultrasound (PICMUS) and show that the use of carefully designed and trained DNN can overcome the limitations of standard image processing priors, which fail at capturing the very specific nature of US images accurately.
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