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首页> 外文期刊>IEEE Transactions on Signal Processing >Multiscale deconvolution of sensor array signals via sum-of-cumulants
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Multiscale deconvolution of sensor array signals via sum-of-cumulants

机译:通过累加和对传感器阵列信号进行多尺度反卷积

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This correspondence presents a solution to a multiscale deconvolution problem using higher order spectra where the data to be deconvolved consist of noise-corrupted sensor array measurements. We assume that the data are generated as a convolution of an unknown wavelet with reflectivity sequences that are linearly time-scaled versions of an unknown reference reflectivity sequence. This type of data occurs in many signal processing applications, including sonar and seismic processing. Our approach relies on exploiting the redundancy in the measurements due to time scaling and does not require knowledge of the wavelet or the reflectivity sequences. We formulate and solve the deconvolution problem as a quadratic minimization subject to a quadratic constraint in the sum-of-cumulants (SOC) domain. The formulation using the SOC approach reduces the effect of additive Gaussian noise on the accuracy of the results when compared with the standard time-domain formulation. We demonstrate this improvement using a simulation example.
机译:这种对应关系提出了使用高阶谱的多尺度反卷积问题的解决方案,其中要进行反卷积的数据包括噪声损坏的传感器阵列测量值。我们假设数据是作为未知小波与反射率序列的卷积生成的,反射率序列是未知参考反射率序列的线性时间标度版本。这种类型的数据出现在许多信号处理应用中,包括声纳和地震处理。我们的方法依赖于由于时间缩放而在测量中利用冗余,并且不需要了解小波或反射率序列。我们将累积卷积(SOC)域中的二次卷积问题公式化并作为二次最小化加以解决。与标准时域公式相比,使用SOC方法的公式减少了加性高斯噪声对结果准确性的影响。我们使用一个仿真示例来演示这种改进。

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