Empirical Mode Decomposition (EMD) for Platform Motion Compensation in Remote Life Sensing Radar
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Radar sensing of respiratory motion from unmanned aerial
vehicles (UAVs) offers great promise for remote life sensing especially in
post-disaster search and rescue applications. One major challenge for this
technology is the management of motion artifacts from the moving UAV platform.
Prior research has focused on using an adaptive filtering approach which
requires installing a secondary radar module for capturing platform motion as a
noise reference. This paper investigates the potential of the empirical mode
decomposition (EMD) technique for the compensation of platform motion artifacts
using only primary radar measurements. Experimental results demonstrated that
the proposed EMD approach can extract the fundamental frequency of the
breathing motion from the combined breathing and platform motion using only one
radar, with an accuracy above 87%.