Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image
Firearms identification is a vital aim of firearm analysis. The firing pin impression image on a cartridge case from a fired bullet is one of the most significant clues in firearms identification. In this study, a set of data which focused on selected 6 features of firing pin impression images befor...
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Journal Sains dan Matematik UPSI
2011
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my.iium.irep.161632017-06-19T02:10:08Z http://irep.iium.edu.my/16163/ Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image Ahmad Kamaruddin, Saadi Md Ghani, Nor Azura Liong, Choong-Yeun Jemain, Abdul Aziz QA75 Electronic computers. Computer science Firearms identification is a vital aim of firearm analysis. The firing pin impression image on a cartridge case from a fired bullet is one of the most significant clues in firearms identification. In this study, a set of data which focused on selected 6 features of firing pin impression images before an entirety of five different pistols of South African made; the Parabellum Vector SPI 9mm model, were used. The numerical features are geometric moments of ring image computed from a total of 747 cartridge case images. Under pattern recognition theory, the supervised features of ring firing pin impression images were then trained and validated using a two-layer backpropagation neural network (BPNN) design with computed hidden layers. A two-layer 6-7-5 connections BPNN of sigmoid/sigmoid transfer functions with ‘trainscg’ algorithm was found to yield the best classification result using cross-validation, where 98% of the images were correctly classified according to the pistols used. Moreover, the network was trained under very small mean-square error (MSE=0.01). This means that neural network method is capable to learn and validate well the numerical features of ring firing pin impression with high precision and fast classification results. Journal Sains dan Matematik UPSI 2011-10-06 Conference or Workshop Item REM application/pdf en http://irep.iium.edu.my/16163/1/KOLUPSI.pdf Ahmad Kamaruddin, Saadi and Md Ghani, Nor Azura and Liong, Choong-Yeun and Jemain, Abdul Aziz (2011) Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image. In: Kolokium Kebangsaan Pasca Siswazah Sains dan Matematik 2011, 1 Oktober 2011, Dewan Konvensyen, Bangunan E-Learning, UPSI. (Unpublished) http://fsmt.upsi.edu.my/kolupsi2011/index.php?option=com_content&view=article&id=15&Itemid=15 |
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QA75 Electronic computers. Computer science Ahmad Kamaruddin, Saadi Md Ghani, Nor Azura Liong, Choong-Yeun Jemain, Abdul Aziz Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image |
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Firearms identification is a vital aim of firearm analysis. The firing pin impression image on a cartridge case from a fired bullet is one of the most significant clues in firearms identification. In this study, a set of data which focused on selected 6 features of firing pin impression images before an entirety of five different pistols of South African made; the Parabellum Vector SPI 9mm model, were used. The numerical features are geometric moments of ring image computed from a total of 747 cartridge case images. Under pattern recognition theory, the supervised features of ring firing pin impression images were then trained and validated using a two-layer backpropagation neural network (BPNN) design with computed hidden layers. A two-layer 6-7-5 connections BPNN of sigmoid/sigmoid transfer functions with ‘trainscg’ algorithm was found to yield the best classification result using cross-validation, where 98% of the images were correctly classified according to the pistols used. Moreover, the network was trained under very small mean-square error (MSE=0.01). This means that neural network method is capable to learn and validate well the numerical features of ring firing pin impression with high precision and fast classification results. |
format |
Conference or Workshop Item |
author |
Ahmad Kamaruddin, Saadi Md Ghani, Nor Azura Liong, Choong-Yeun Jemain, Abdul Aziz |
author_facet |
Ahmad Kamaruddin, Saadi Md Ghani, Nor Azura Liong, Choong-Yeun Jemain, Abdul Aziz |
author_sort |
Ahmad Kamaruddin, Saadi |
title |
Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image |
title_short |
Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image |
title_full |
Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image |
title_fullStr |
Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image |
title_full_unstemmed |
Artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image |
title_sort |
artificial neural network implementation on firearm recognition system with respect to ring firing pin impression image |
publisher |
Journal Sains dan Matematik UPSI |
publishDate |
2011 |
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http://irep.iium.edu.my/16163/1/KOLUPSI.pdf http://irep.iium.edu.my/16163/ http://fsmt.upsi.edu.my/kolupsi2011/index.php?option=com_content&view=article&id=15&Itemid=15 |
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