Infrared thermography as a non-invasive scanner for concealed weapon detection

Date

2024-02-08T15:55:56Z

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

Cranfield University

Department

Type

Presentation

ISSN

Format

Free to read from

Citation

Khor, WeeLiam; Chen, Yichen Kelly; Roberts, Michael; Ciampa, Francesco (2024). Infrared thermography as a non-invasive scanner for concealed weapon detection. Cranfield Online Research Data (CORD). Presentation. https://doi.org/10.17862/cranfield.rd.25028030.v2

Abstract

Non-invasive scanning techniques are vital for threat detection in areas of heavy human traffic to ensure civilian safety. Longer waves in the electromagnetic spectrum, such as millimetre waves and terahertz, have been successfully deployed in commercial personnel scanning systems. However, these waves suffer from lower image resolution due to their longer wavelengths. Infrared has a shorter wavelength compared to millimetre waves and terahertz. Infrared has a lower penetration potential compared to its counterparts but boosts higher image resolution due to its shorter wavelength. Machine learning techniques, i.e., principal component analysis, active contour, and Fuzzy-c, were applied to the infrared images to improve the visualization of concealed objects.Convolutional neural networks, i.e., ResNet-50, were explored as an automatic classifier for the presence of concealed objects. A transfer learning approach was applied to an ImageNet pre-trained ResNet-50 model. After preprocessing the IR images using Fuzzy-c, two models were trained, using 900 and 3082 images, respectively. Evaluating the models using a confusion matrix and receiver operating characteristic curve, an area-under-curve of 0.869 and 0.922 was obtained. An optimization procedure was used to determine the model threshold, resulting in a prediction error of 19.9% and 14.9%, respectively.

Description

Software Description

Software Language

Github

Keywords

DSDS23, Infrared thermography, weapon detection, image analysis, machine learning, Convolutional neural networks, fuzzy-c, principal component analysis, Active contour, DSDS23 Paper Presentation

DOI

10.17862/cranfield.rd.25028030.v2

Rights

CC BY 4.0

Relationships

Relationships

Supplements

Funder/s

Defence and Security Accelerator: grant number ACC2022360