Welcome to the new-look MARS. See something that needs attention? Use our "Send Feedback" link at page bottom.
 

Least Square Estimation of Missing Sensor Data for Oversampled Arrays

Date

Authors

Le, Thuykhanh

Journal Title

Journal ISSN

Volume Title

Publisher

Abstract

The problem of recovering samples lost from time series or sensor data is important in signal processing. When the underlying signal is known to be bandlimited, and the sample rate is higher than the Nyquist rate, the samples are dependent. In this case a missing sample or samples can be recovered from the remaining samples. In the absence of noise, the accuracy of the sample estimates depends on the degree of oversampling and the total number of good samples available. In previous work, researchers often assumed that large numbers of high quality (high signal-to-noise ratio) samples were available. This assumption may not be valid in practice. In practice the number of samples is finite and the signal is corrupted by noise. The truncation and the noise will result in errors in the sample estimates. This thesis investigates a least squares solution to the problem, and uses the data from SwellEx-96 experiment to evaluate several approaches, including the least squares approach.

Description

Keywords

Least square estimation, Missing a sample, Bandlimited signal, Oversampled array

Citation