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Wavelet-based deconvolution of ultrasonic signals in nondestructive evaluation

机译:无损评估中基于小波的超声信号反卷积

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In this paper, the inverse problem of reconstructing reflectivity function of a medium is examined within a blind deconvolution framework. The ultrasound pulse is estimated using higher-order statistics, and Wiener filter is used to obtain the ultrasonic reflectivity function through wavelet-based models. A new approach to the parameter estimation of the inverse filtering step is proposed in the nondestructive evaluation field, which is based on the theory of Fourier-Wavelet regularized deconvolution (ForWaRD). This new approach can be viewed as a solution to the open problem of adaptation of the ForWaRD framework to perform the convolution kernel estimation and deconvolution interdependently. The results indicate stable solutions of the estimated pulse and an improvement in the radio-frequency (RF) signal taking into account its signal-to-noise ratio (SNR) and axial resolution. Simulations and experiments showed that the proposed approach can provide robust and optimal estimates of the reflectivity function.
机译:在本文中,在盲反卷积框架内研究了重构介质反射率函数的反问题。使用高阶统计量估计超声脉冲,并使用维纳滤波器通过基于小波的模型获得超声反射率函数。在傅里叶-小波正则反卷积(ForWaRD)理论的基础上,提出了一种在无损评估领域中进行逆滤波步骤参数估计的新方法。这种新方法可以看作是解决ForWaRD框架适应性问题的解决方案,以相互依赖地执行卷积核估计和反卷积。结果表明,考虑到其信噪比(SNR)和轴向分辨率,估计脉冲的稳定解和射频(RF)信号的改善。仿真和实验表明,所提出的方法可以为反射率函数提供鲁棒和最佳的估计。

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