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A linear model approach for ultrasonic inverse problems with attenuation and dispersion

机译:具有衰减和色散的超声反问题的线性模型方法

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摘要

Ultrasonic inverse problems such as spike train deconvolution, synthetic aperture focusing, or tomography attempt to reconstruct spatial properties of an object (discontinuities, delaminations, flaws, etc.) from noisy and incomplete measurements. They require an accurate description of the data acquisition process. Dealing with frequency-dependent attenuation and dispersion is therefore crucial because both phenomena modify the wave shape as the travel distance increases. In an inversion context, this paper proposes to exploit a linear model of ultrasonic data taking into account attenuation and dispersion. The propagation distance is discretized to build a finite set of radiation impulse responses. Attenuation is modeled with a frequency power law and then dispersion is computed to yield physically consistent responses. Using experimental data acquired from attenuative materials, this model outperforms the standard attenuation-free model and other models of the literature. Because of model linearity, robust estimation methods can be implemented. When matched filtering is employed for single echo detection, the model that we propose yields precise estimation of the attenuation coefficient and of the sound velocity. A thickness estimation problem is also addressed through spike deconvolution, for which the proposed model also achieves accurate results.
机译:诸如尖峰列反褶积,合成孔径聚焦或层析成像之类的超声逆问题试图从嘈杂和不完整的测量中重建对象的空间特性(不连续,分层,瑕疵等)。他们需要对数据采集过程的准确描述。因此,处理与频率相关的衰减和色散至关重要,因为这两种现象都会随着行进距离的增加而改变波形。在反演环境中,本文提出了一种考虑衰减和色散的超声数据线性模型。将传播距离离散化以建立有限的一组辐射脉冲响应。利用频率幂定律对衰减建模,然后计算色散以产生物理上一致的响应。使用从衰减材料获得的实验数据,该模型优于标准的无衰减模型和其他文献模型。由于模型线性,可以实现鲁棒的估计方法。当将匹配滤波用于单回波检测时,我们提出的模型可精确估计衰减系数和声速。厚度估计问题也通过尖峰反卷积得到解决,为此,所提出的模型也获得了准确的结果。

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