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GPR signal classification with low-rank and convolutional sparse coding representation

conference contribution
posted on 2024-11-16, 01:55 authored by Fok Hing Chi Tivive, Abdesselam BouzerdoumAbdesselam Bouzerdoum, Canicious Abeynayake
This paper presents a method for target detection and classification of improvised explosive devices (IEDs), based on a joint low-rank and sparse decomposition of ground penetrating radar (GPR) signals. First the acquired GPR signals are decomposed into a low-rank component, containing the background clutter and the ground surface reflections, and a set of convolutional sparse codes, representing the target signals. Then, features are extracted from each reconstructed signal and classified using support vector machines. Experiments are conducted with real data acquired in the wild from 18 types of IEDs. Experimental results are presented which show that individual GPR traces can be classified with 73.8% accuracy. Furthermore, the IED type can be identified with 84.2% accuracy by combining individual signal classifications.

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Citation

F. Tivive, A. Bouzerdoum & C. Abeynayake, "GPR signal classification with low-rank and convolutional sparse coding representation," in IEEE Radar Conference, RadarConf 2017, 2017, pp. 1352-1356.

Parent title

2017 IEEE Radar Conference, RadarConf 2017

Pagination

1352-1356

Language

English

Notes

ISBN: 9781467388238

RIS ID

115143

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