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Subsampling Approaches for Compressed Sensing with Ultrasound Arrays in Non-Destructive Testing

机译:非破坏性测试中超声阵列压缩检测的分布方法

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摘要

Full Matrix Capture is a multi-channel data acquisition method which enables flexible, high resolution imaging using ultrasound arrays. However, the measurement time and data volume are increased considerably. Both of these costs can be circumvented via compressed sensing, which exploits prior knowledge of the underlying model and its sparsity to reduce the amount of data needed to produce a high resolution image. In order to design compression matrices that are physically realizable without sophisticated hardware constraints, structured subsampling patterns are designed and evaluated in this work. The design is based on the analysis of the Cramér–Rao Bound of a single scatterer in a homogeneous, isotropic medium. A numerical comparison of the point spread functions obtained with different compression matrices and the Fast Iterative Shrinkage/Thresholding Algorithm shows that the best performance is achieved when each transmit event can use a different subset of receiving elements and each receiving element uses a different section of the echo signal spectrum. Such a design has the advantage of outperforming other structured patterns to the extent that suboptimal selection matrices provide a good performance and can be efficiently computed with greedy approaches.
机译:完整的矩阵捕获是一种多通道数据采集方法,可使用超声阵列实现灵活的高分辨率成像。然而,测量时间和数据量显着增加。这两种成本都可以通过压缩感测来避难,这利用潜在模型的先验知识及其稀疏性来减少产生高分辨率图像所需的数据量。为了设计在没有复杂硬件限制的情况下物理可实现的压缩矩阵,在这项工作中设计和评估了结构化的分布模式。该设计基于均匀各向同性培养基中单个散射体的Cramér-Rao的分析。用不同的压缩矩阵获得的点扩展功能的数值比较和快速迭代收缩/阈值算法表明,当每个发送事件可以使用不同的接收元件子集时,每个接收元件使用不同的部分时,实现了最佳性能回声信号谱。这样的设计具有优势优于其他结构化图案,以便在次优选择矩阵提供良好性能的程度上,并且可以用贪婪的方法有效地计算。

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