Title :
Multiscale deconvolution of sensor array signals via sum-of-cumulants
Author :
Akgül, Tayfun ; El-Jaroudi, Amro ; Simaan, Marwan A.
Author_Institution :
Dept. of Electr. & Electron. Eng., Cukurova Univ., Adana, Turkey
fDate :
6/1/1997 12:00:00 AM
Abstract :
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
Keywords :
Gaussian noise; array signal processing; convolution; deconvolution; higher order statistics; interference (signal); minimisation; redundancy; sequences; wavelet transforms; additive Gaussian noise; convolution; higher order spectra; multiscale deconvolution; noise-corrupted sensor array measurements; quadratic constraint; quadratic minimization; redundancy; reflectivity sequences; seismic processing; sensor array signals; signal processing applications; simulation; sonar processing; sum-of-cumulants; time scaling; unknown wavelet; Array signal processing; Convolution; Deconvolution; Noise measurement; Reflectivity; Seismic measurements; Sensor arrays; Sonar applications; Sonar measurements; Time measurement;
Journal_Title :
Signal Processing, IEEE Transactions on