Skip to main content

Statistical and adaptive signal processing for UXO discrimination for next-generation sensor data

Publication ,  Conference
Tantum, SL; Wang, YQ; Collins, LM
Published in: PIERS 2006 Cambridge - Progress in Electromagnetics Research Symposium, Proceedings
January 1, 2006

Until recently, detection algorithms could not reliably distinguish between buried UXO and clutter, leading to many false alarms. Over the last several years modern geophysical techniques have been developed that merge more sophisticated sensors, underlying physical models, statistical signal processing algorithms, and adaptive training techniques. These new approaches have dramatically reduced false alarm rates, although for the most part they have been applied to data collected at sites with relatively benign topology and anomaly densities. On more challenging sites, performance of even these more modern discrimination approaches is still quite poor. As a result, efforts are underway to develop a new generation of UXO sensors that will produce data streams of multi-axis vector or gradiometric measurements, for which optimal processing has not yet been carefully considered or developed. We describe a, research program to address this processing gap, employing a synergistic use of advanced phenomenologicalmodeling and signal-processing algorithms. The key foci óf the program are (1) development of new physics-based signal processing approaches applicable to the problem in which vector data is available from such sensors; and (2) development of the theory of optimal experiments to guide the optimal design and deployment of the new sensor modalities. Here, we present initial results using simulated data obtained with our phenomenological models that indicate that optimal processing of features extracted from multi-axis EMI data can provide substantial improvements in discrimination performance over processing of features extracted from single-axis data.

Duke Scholars

Published In

PIERS 2006 Cambridge - Progress in Electromagnetics Research Symposium, Proceedings

DOI

Publication Date

January 1, 2006

Start / End Page

302 / 305
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Tantum, S. L., Wang, Y. Q., & Collins, L. M. (2006). Statistical and adaptive signal processing for UXO discrimination for next-generation sensor data. In PIERS 2006 Cambridge - Progress in Electromagnetics Research Symposium, Proceedings (pp. 302–305). https://doi.org/10.2529/piers050916145312
Tantum, S. L., Y. Q. Wang, and L. M. Collins. “Statistical and adaptive signal processing for UXO discrimination for next-generation sensor data.” In PIERS 2006 Cambridge - Progress in Electromagnetics Research Symposium, Proceedings, 302–5, 2006. https://doi.org/10.2529/piers050916145312.
Tantum SL, Wang YQ, Collins LM. Statistical and adaptive signal processing for UXO discrimination for next-generation sensor data. In: PIERS 2006 Cambridge - Progress in Electromagnetics Research Symposium, Proceedings. 2006. p. 302–5.
Tantum, S. L., et al. “Statistical and adaptive signal processing for UXO discrimination for next-generation sensor data.” PIERS 2006 Cambridge - Progress in Electromagnetics Research Symposium, Proceedings, 2006, pp. 302–05. Scopus, doi:10.2529/piers050916145312.
Tantum SL, Wang YQ, Collins LM. Statistical and adaptive signal processing for UXO discrimination for next-generation sensor data. PIERS 2006 Cambridge - Progress in Electromagnetics Research Symposium, Proceedings. 2006. p. 302–305.

Published In

PIERS 2006 Cambridge - Progress in Electromagnetics Research Symposium, Proceedings

DOI

Publication Date

January 1, 2006

Start / End Page

302 / 305