DocumentCode :
2944747
Title :
Gun detection and classification based on feature extraction from a new sensor array imaging system
Author :
Al-Qubaa, A.R. ; Al-Shiha, A. ; Tian, G.Y.
Author_Institution :
Remote Sensing Center, Mosul Univ., Mosul, Iraq
fYear :
2013
fDate :
17-18 Dec. 2013
Firstpage :
88
Lastpage :
94
Abstract :
Electromagnetic imaging currently occupies a vital role in various disciplines from engineering to medical applications. These roles are based upon the fundamentals of Electromagnetic (EM) fields and their relationship with the material properties under evaluation. A new system based on a Giant Magneto-Resistive (GMR) sensor array was built to capture the scattered EM signal returned by metallic objects. This paper evaluates the capabilities of the new system based on features extracted from objects response to EM fields. A novel amplitude variation feature is proposed to obtain high classification rates. The selected features of metallic objects are applied to detect and classify `threat´ items. A collection of handguns with other commonly used metallic objects are tested. Promising results show that the new system can detect and identify the threat items. This novel procedure has the potential to produce significant improvements in automatic weapon detection and classification.
Keywords :
array signal processing; electromagnetic wave scattering; feature extraction; giant magnetoresistance; image classification; image fusion; object detection; weapons; EM signal scattering; GMR sensor array; automatic weapon classification; automatic weapon detection; classification rates; electromagnetic imaging; feature extraction; giant magneto-resistive sensor array; gun classification; gun detection; handguns; material properties; metallic objects; sensor array imaging system; threat item classification; threat item detection; threat item identification; Aluminum; Belts; Biomedical imaging; Generators; Indexes; Transient analysis; Weapons; electromagnetic imaging; feature extraction; metal detector; metallic object classification;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Electrical, Communication, Computer, Power, and Control Engineering (ICECCPCE), 2013 International Conference on
Conference_Location :
Mosul
Type :
conf
DOI :
10.1109/ICECCPCE.2013.6998740
Filename :
6998740
Link To Document :
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