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International Journal of Innovation and Applied Studies
ISSN: 2028-9324     CODEN: IJIABO     OCLC Number: 828807274     ZDB-ID: 2703985-7
 
 
Saturday 07 March 2026

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  Call for Papers - May 2026     |     Now IJIAS is indexed in EBSCO, ResearchGate, ProQuest, Chemical Abstracts Service, Index Copernicus, IET Inspec Direct, Ulrichs Web, Google Scholar, CAS Abstracts, J-Gate, UDL Library, CiteSeerX, WorldCat, Scirus, Research Bible and getCited, etc.  
 
 
 

In Press: Design of a system capable of classifying suspicious plastic luggage with reasonable accuracy using pre-trained CNNs within the framework of X-ray image classification



                 

Konan Trinité Boca1, Konan Hyacinthe Kouassi2, Allani Jules3, and Olivier Asseu4

1 INPHB, EDP-STI, Côte d’Ivoire
2 ESATIC, LASTIC, Côte d’Ivoire
3 INPHB, EDP-STI, Côte d’Ivoire
4 INPHB, Côte d’Ivoire

Original language: English

Copyright © 2026 ISSR Journals. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Abstract


Accurately detecting threats such as plastic firearms presents a complex challenge in modern security systems due to the difficulty in distinguishing these objects from harmless ones when examined using X-ray scanners. This paper explores CNN architecture and image projection methods to compare systems capable of classifying plastic firearms with high accuracy. The results show that integrating data from three sources (a Stream of Commerce dataset, staged images, and synthetically produced images) was crucial for achieving satisfactory classification performance. We also reveal that to improve accuracy and generalization, it is important to expand the training dataset and explore more advanced neural networks, despite the limitations imposed by available computing power. Future work could include exploring the need for multiple views of the baggage examined and the use of more sophisticated imaging technologies, such as CT scanners, to further improve detection capabilities.

Author Keywords: convolutional neural networks (CNNs), image processing techniques.