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Main Authors: Mademlis, Ioannis, Batsis, Georgios, Chrysochoou, Adamantia Anna Rebolledo, Papadopoulos, Georgios Th.
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.03658
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author Mademlis, Ioannis
Batsis, Georgios
Chrysochoou, Adamantia Anna Rebolledo
Papadopoulos, Georgios Th.
author_facet Mademlis, Ioannis
Batsis, Georgios
Chrysochoou, Adamantia Anna Rebolledo
Papadopoulos, Georgios Th.
contents Automated detection of contraband items in X-ray images can significantly increase public safety, by enhancing the productivity and alleviating the mental load of security officers in airports, subways, customs/post offices, etc. The large volume and high throughput of passengers, mailed parcels, etc., during rush hours practically make it a Big Data problem. Modern computer vision algorithms relying on Deep Neural Networks (DNNs) have proven capable of undertaking this task even under resource-constrained and embedded execution scenarios, e.g., as is the case with fast, single-stage object detectors. However, no comparative experimental assessment of the various relevant DNN components/methods has been performed under a common evaluation protocol, which means that reliable cross-method comparisons are missing. This paper presents exactly such a comparative assessment, utilizing a public relevant dataset and a well-defined methodology for selecting the specific DNN components/modules that are being evaluated. The results indicate the superiority of Transformer detectors, the obsolete nature of auxiliary neural modules that have been developed in the past few years for security applications and the efficiency of the CSP-DarkNet backbone CNN.
format Preprint
id arxiv_https___arxiv_org_abs_2310_03658
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Visual inspection for illicit items in X-ray images using Deep Learning
Mademlis, Ioannis
Batsis, Georgios
Chrysochoou, Adamantia Anna Rebolledo
Papadopoulos, Georgios Th.
Computer Vision and Pattern Recognition
Automated detection of contraband items in X-ray images can significantly increase public safety, by enhancing the productivity and alleviating the mental load of security officers in airports, subways, customs/post offices, etc. The large volume and high throughput of passengers, mailed parcels, etc., during rush hours practically make it a Big Data problem. Modern computer vision algorithms relying on Deep Neural Networks (DNNs) have proven capable of undertaking this task even under resource-constrained and embedded execution scenarios, e.g., as is the case with fast, single-stage object detectors. However, no comparative experimental assessment of the various relevant DNN components/methods has been performed under a common evaluation protocol, which means that reliable cross-method comparisons are missing. This paper presents exactly such a comparative assessment, utilizing a public relevant dataset and a well-defined methodology for selecting the specific DNN components/modules that are being evaluated. The results indicate the superiority of Transformer detectors, the obsolete nature of auxiliary neural modules that have been developed in the past few years for security applications and the efficiency of the CSP-DarkNet backbone CNN.
title Visual inspection for illicit items in X-ray images using Deep Learning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2310.03658