TY - GEN
T1 - Baggage Threat Detection Under Extreme Class Imbalance
AU - Ahmed, Abdelfatah
AU - Velayudhan, Divya
AU - Hassan, Taimur
AU - Hassan, Bilal
AU - Dias, Jorge
AU - Werghi, Naoufel
N1 - Funding Information:
This work is supported by a research fund from Khalifa University. Ref: CIRA-2019-047, CIRA-2021-052, and the Abu Dhabi Department of Education and Knowledge (ADEK), Ref: AARE19-156.
Publisher Copyright:
© 2022 IEEE.
PY - 2022
Y1 - 2022
N2 - Automatic detection of prohibited items is a critical but difficult task during aviation security. Manual detection of such items is a time-consuming process that is also limited by the examination capacity of the security inspector. To overcome these constraints, several researchers have proposed deep learning solutions to identify contraband data contained within baggage X-ray imagery. However, when trained on the imbalanced data that is frequently encountered in real-world aviation screening, the performance of these models suffers significantly. Towards this end, this paper proposes the coupling of various imbalanced learning strategies that can be used to augment traditional threat detection models and enable them to effectively learn the extremely imbalanced distribution of normal and threat object categories. The proposed approach is validated on three public datasets, namely SIXray, OPIXray, and COMPASS-XP, where it achieved the performance improvement of 9.52%, 11.32%, and 10.98%, respectively, on all three datasets in terms of mean intersection-over-union as compared to the state-of-the-art threat detection frameworks.
AB - Automatic detection of prohibited items is a critical but difficult task during aviation security. Manual detection of such items is a time-consuming process that is also limited by the examination capacity of the security inspector. To overcome these constraints, several researchers have proposed deep learning solutions to identify contraband data contained within baggage X-ray imagery. However, when trained on the imbalanced data that is frequently encountered in real-world aviation screening, the performance of these models suffers significantly. Towards this end, this paper proposes the coupling of various imbalanced learning strategies that can be used to augment traditional threat detection models and enable them to effectively learn the extremely imbalanced distribution of normal and threat object categories. The proposed approach is validated on three public datasets, namely SIXray, OPIXray, and COMPASS-XP, where it achieved the performance improvement of 9.52%, 11.32%, and 10.98%, respectively, on all three datasets in terms of mean intersection-over-union as compared to the state-of-the-art threat detection frameworks.
KW - Baggage Threat Detection
KW - Class Imbalance
KW - Security X-ray Imagery
UR - https://www.scopus.com/pages/publications/85133202433
U2 - 10.1109/ICoDT255437.2022.9787472
DO - 10.1109/ICoDT255437.2022.9787472
M3 - Conference contribution
AN - SCOPUS:85133202433
T3 - 2022 2nd International Conference on Digital Futures and Transformative Technologies, ICoDT2 2022
BT - 2022 2nd International Conference on Digital Futures and Transformative Technologies, ICoDT2 2022
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2nd International Conference on Digital Futures and Transformative Technologies, ICoDT2 2022
Y2 - 24 May 2022 through 26 May 2022
ER -