Firearm Classification using Neural Networks on Ring of Firing Pin Impression Images
This paper implements two layer neural networks with different feedforward backpropagation algorithms for better performance of firearm classification us-ing numerical features from the ring image. A total of 747 ring images which are extracted from centre of the firing pin impression have been capt...
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Ediciones Universidad de Salamanca
2012-12-01
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Series: | Advances in Distributed Computing and Artificial Intelligence Journal |
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Online Access: | https://revistas.usal.es/index.php/2255-2863/article/view/10091 |
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doaj-99dc3896e17b4bee9da8846bf031c8382020-11-25T03:29:46ZengEdiciones Universidad de SalamancaAdvances in Distributed Computing and Artificial Intelligence Journal2255-28632012-12-0113273410.14201/ADCAIJ201213127349517Firearm Classification using Neural Networks on Ring of Firing Pin Impression ImagesSAADI Bin Ahmad KAMARUDDIN0Nor AZURA MD GHANIB1Choong-Yeun LIONG2Abdul AZIZ JEMAIN3International Islamic University MalaysiaUniversiti Teknologi MARAUniversiti Kebangsaan MalaysiaUniversiti Kebangsaan MalaysiaThis paper implements two layer neural networks with different feedforward backpropagation algorithms for better performance of firearm classification us-ing numerical features from the ring image. A total of 747 ring images which are extracted from centre of the firing pin impression have been captured from five different pistols of the Parabellum Vector SPI 9mm model. Then, based on finding from the previous studies, the six best geometric moments numerical fea-tures were extracted from those ring images. The elements of the dataset were further randomly divided into the training set (523 elements), testing set (112 el-ements) and validation set (112 elements) in accordance with the requirement of the supervised learning nature of the backpropagation neural network (BPNN). Empirical results show that a two layer BPNN with a 6-7-5 configura-tion and tansig/tansig transfer functions with ‘trainscg’ training algorithm has produced the best classification result of 98%. The classification result is an improvement compared to the previous studies as well as confirming that the ring image region contains useful information for firearm classification.https://revistas.usal.es/index.php/2255-2863/article/view/10091firearm classificationring imagegeometric momentsbackpropagationneural network |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
SAADI Bin Ahmad KAMARUDDIN Nor AZURA MD GHANIB Choong-Yeun LIONG Abdul AZIZ JEMAIN |
spellingShingle |
SAADI Bin Ahmad KAMARUDDIN Nor AZURA MD GHANIB Choong-Yeun LIONG Abdul AZIZ JEMAIN Firearm Classification using Neural Networks on Ring of Firing Pin Impression Images Advances in Distributed Computing and Artificial Intelligence Journal firearm classification ring image geometric moments backpropagation neural network |
author_facet |
SAADI Bin Ahmad KAMARUDDIN Nor AZURA MD GHANIB Choong-Yeun LIONG Abdul AZIZ JEMAIN |
author_sort |
SAADI Bin Ahmad KAMARUDDIN |
title |
Firearm Classification using Neural Networks on Ring of Firing Pin Impression Images |
title_short |
Firearm Classification using Neural Networks on Ring of Firing Pin Impression Images |
title_full |
Firearm Classification using Neural Networks on Ring of Firing Pin Impression Images |
title_fullStr |
Firearm Classification using Neural Networks on Ring of Firing Pin Impression Images |
title_full_unstemmed |
Firearm Classification using Neural Networks on Ring of Firing Pin Impression Images |
title_sort |
firearm classification using neural networks on ring of firing pin impression images |
publisher |
Ediciones Universidad de Salamanca |
series |
Advances in Distributed Computing and Artificial Intelligence Journal |
issn |
2255-2863 |
publishDate |
2012-12-01 |
description |
This paper implements two layer neural networks with different feedforward backpropagation algorithms for better performance of firearm classification us-ing numerical features from the ring image. A total of 747 ring images which are extracted from centre of the firing pin impression have been captured from five different pistols of the Parabellum Vector SPI 9mm model. Then, based on finding from the previous studies, the six best geometric moments numerical fea-tures were extracted from those ring images. The elements of the dataset were further randomly divided into the training set (523 elements), testing set (112 el-ements) and validation set (112 elements) in accordance with the requirement of the supervised learning nature of the backpropagation neural network (BPNN). Empirical results show that a two layer BPNN with a 6-7-5 configura-tion and tansig/tansig transfer functions with ‘trainscg’ training algorithm has produced the best classification result of 98%. The classification result is an improvement compared to the previous studies as well as confirming that the ring image region contains useful information for firearm classification. |
topic |
firearm classification ring image geometric moments backpropagation neural network |
url |
https://revistas.usal.es/index.php/2255-2863/article/view/10091 |
work_keys_str_mv |
AT saadibinahmadkamaruddin firearmclassificationusingneuralnetworksonringoffiringpinimpressionimages AT norazuramdghanib firearmclassificationusingneuralnetworksonringoffiringpinimpressionimages AT choongyeunliong firearmclassificationusingneuralnetworksonringoffiringpinimpressionimages AT abdulazizjemain firearmclassificationusingneuralnetworksonringoffiringpinimpressionimages |
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1724577193185509376 |