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Empirical Mode Decomposition Technique with Conditional Mutual Information for Denoising Operational Sensor Data

Description/Abstract

A new approach is developed for denoising signals using the Empirical Mode Decomposition (EMD) technique and the Information-theoretic method. The EMD technique is applied to decompose a noisy sensor signal into the so-called intrinsic mode functions (IMFs). These functions are of the same length and in the same time domain as the original signal. Therefore, the EMD technique preserves varying frequency in time. Assuming the given signal is corrupted by high-frequency Gaussian noise implies that most of the noise should be captured by the first few modes. Therefore, our proposition is to separate the modes into high-frequency and low-frequency groups. We applied an information-theoretic method, namely mutual information, to determine the cut-off for separating the modes. A denoising procedure is applied only to the high-frequency group using a shrinkage approach. Upon denoising, this group is combined with the original low-frequency group to obtain the overall denoised signal. We illustrate our approach with simulated and real-world data sets. The results are compared to two popular denoising techniques in the literature, namely discrete Fourier transform (DFT) and discrete wavelet transform (DWT). We found that our approach performs better than DWT and DFT in most cases, and comparatively to DWT in some cases in terms of: (i) mean square error, (ii) recomputed signal-to-noise ratio, and (iii) visual quality of the denoised signals.

Authors: Omitaomu, Olufemi A [ORNL]; Protopopescu, Vladimir A [ORNL]; Ganguly, Auroop R [ORNL]
Publication Date:2011 Jan 01
OSTI Identifier: 1027389
DOE Contract Number:DE-AC05-00OR22725
Resource Type:Journal Article
Resource Relation:Journal Name: IEEE Sensors Journal; Journal Volume: 11; Journal Issue: 10
Research Org:Oak Ridge National Laboratory (ORNL); Center for Computational Sciences
Sponsoring Org:ORNL LDRD Director's R&D
Country of Publication:United States
Language:English
Format: Size: 2565-2575
Other Number(s):Journal ID: ISSN 1530-437X; TRN: US201121%%420
Subject:99 GENERAL AND MISCELLANEOUS//MATHEMATICS, COMPUTING, AND INFORMATION SCIENCE; SENSORS; SHRINKAGE; SIGNAL-TO-NOISE RATIO
Related Subject:Empirical mode decompistion; wavelet transforms; signal processing; signal denoising; cargo radiation signal
Update Date:2011 Dec 05

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