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Ultrasonic Phased Array Compressive Imaging in Time and Frequency Domain: Simulation Experimental Verification and Real Application

机译:时频域超声相控阵压缩成像:仿真实验验证与实际应用

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摘要

Embracing the fact that one can recover certain signals and images from far fewer measurements than traditional methods use, compressive sensing (CS) provides solutions to huge amounts of data collection in phased array-based material characterization. This article describes how a CS framework can be utilized to effectively compress ultrasonic phased array images in time and frequency domains. By projecting the image onto its Discrete Cosine transform domain, a novel scheme was implemented to verify the potentiality of CS for data reduction, as well as to explore its reconstruction accuracy. The results from CIVA simulations indicate that both time and frequency domain CS can accurately reconstruct array images using samples less than the minimum requirements of the Nyquist theorem. For experimental verification of three types of artificial flaws, although a considerable data reduction can be achieved with defects clearly preserved, it is currently impossible to break Nyquist limitation in the time domain. Fortunately, qualified recovery in the frequency domain makes it happen, meaning a real breakthrough for phased array image reconstruction. As a case study, the proposed CS procedure is applied to the inspection of an engine cylinder cavity containing different pit defects and the results show that orthogonal matching pursuit (OMP)-based CS guarantees the performance for real application.
机译:压缩传感(CS)包含了这样一个事实,即它可以从比传统方法少得多的测量中恢复某些信号和图像,从而为基于相控阵材料表征的大量数据收集提供了解决方案。本文介绍了如何利用CS框架在时域和频域中有效压缩超声相控阵图像。通过将图像投影到其离散余弦变换域上,实现了一种新颖的方案,以验证CS用于数据缩减的潜力,并探索其重构精度。 CIVA仿真的结果表明,时域和频域CS都可以使用小于Nyquist定理的最低要求的样本来准确地重建阵列图像。对于三种类型的人工缺陷的实验验证,尽管可以通过保留清晰的缺陷来实现可观的数据缩减,但是目前无法在时域上打破Nyquist限制。幸运的是,频域中的合格恢复使其成为现实,这意味着相控阵图像重建的真正突破。作为一个案例研究,将所提出的CS程序应用于检查具有不同凹坑缺陷的发动机汽缸腔,结果表明基于正交匹配追踪(OMP)的CS保证了实际应用的性能。

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