Learning optimal spatial subsampling for single-channel ultrasound imaging

Han Wang , Eduardo Pérez , Florian Römer
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Abstract

Traditional ultrasound synthetic aperture imaging relies on closely spaced measurement positions, where the pitch size is smaller than half the ultrasound wavelength. While this approach achieves high-quality images, it necessitates the storage of large data sets and an extended measurement time. To address these issues, there is a burgeoning interest in exploring effective subsampling techniques. Recently, Deep Probabilistic Subsampling (DPS) has emerged as a feasible approach for designing selection matrices for multi-channel systems. In this paper, we address spatial subsampling in single-channel ultrasound imaging for Nondestructive Testing (NDT) applications. To accomplish a model-based data-driven spatial subsampling approach within the DPS framework that allows for the optimal selection of sensing positions on a discretized grid, it is crucial to build an adequate signal model and design an adapted network architecture with a reasonable cost function. The reconstructed image quality is then evaluated through simulations, showing that the presented subsampling pattern approaches the performance of fully sampling and substantially outperforms uniformly spatial subsampling in terms of signal recovery quality.

学习单通道超声成像的最佳空间子采样
传统的超声合成孔径成像依赖于间距较近的测量位置,间距小于超声波长的一半。这种方法虽然能获得高质量的图像,但需要存储大量数据集和延长测量时间。为了解决这些问题,人们对探索有效的子采样技术产生了浓厚的兴趣。最近,深度概率子采样(DPS)已成为设计多通道系统选择矩阵的一种可行方法。在本文中,我们将讨论无损检测(NDT)应用中单通道超声成像的空间子采样问题。要在 DPS 框架内实现基于模型的数据驱动空间子采样方法,从而在离散网格上优化选择传感位置,关键是要建立一个适当的信号模型,并设计一个具有合理成本函数的适配网络架构。然后通过模拟评估重建图像的质量,结果表明所提出的子采样模式接近完全采样的性能,在信号恢复质量方面大大优于均匀空间子采样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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