Title :
Linear Mean Square Interpolation of Missing Samples
Author :
Jaffe, Cheryl H.
Abstract :
The problem of missing samples is described in the context of a beamforming operation. Tapering a complete, uniformly spaced sequence is shown to suppress beam sidelobes, but the taper fails to suppress sidelobes when uniformity of sample spacing is destroyed by missing samples. A linear mean square estimator (LMSE) is employed to interpolate the missing samples, thereby regaining sidelobe suppression afforded by the taper. The algorithm is described, and results are compared to several common interpolation techniques. The number and configuration of missing samples that can be simultaneously reconstructed in this manner is discussed as part of a broader discussion of the robustness of the algorithm
Keywords :
array signal processing; mean square error methods; signal reconstruction; signal sampling; LMSE; beamforming operation; linear mean square estimator; linear mean square interpolation; missing sample reconstruction; sidelobe suppression; uniformly spaced sequence; Array signal processing; Doppler shift; Fourier transforms; Frequency; Image reconstruction; Interpolation; Robustness; Signal resolution; Surface waves; Transmitters; Interpolation; Linear Mean Square Estimation; Missing Samples; Sidelobe Suppression;
Conference_Titel :
Digital Signal Processing Workshop, 12th - Signal Processing Education Workshop, 4th
Conference_Location :
Teton National Park, WY
Print_ISBN :
1-4244-3534-3
Electronic_ISBN :
1-4244-0535-1
DOI :
10.1109/DSPWS.2006.265442