TY - GEN
T1 - Maritime surveillance using unmanned vehicles: deep learning-based vessel re-identification
T2 - SPIE Security + Defence, 2024
AU - Geers, Yoni
AU - Willems, Tim
AU - Nita, Cornelia
AU - Nguyen, Tien Thanh
AU - Aelterman, Jan
N1 - Publisher Copyright:
© 2024 SPIE.
PY - 2024
Y1 - 2024
N2 - Maritime surveillance is crucial for ensuring compliance with regulations and protecting critical maritime infrastructure. Conventional tracking systems, such as AIS or LRIT, are susceptible to manipulation as they can be switched off or altered. To address this vulnerability, there is a growing need for a visual monitoring system facilitated by unmanned systems such as unmanned aerial vehicles (UAVs) and unmanned surface vehicles (USVs). Equipped with sensors and cameras, these unmanned vehicles collect vast amounts of data that often demand time-consuming manual processing. This study presents a robust method for automatic target vessel re-identification from RGB imagery captured by unmanned vehicles. Our approach uniquely combines visual appearance and textual data recognized from the acquired images to enhance the accuracy of target vessel identification and authentication against a known vessel database. We achieve this through utilizing Convolutional Neural Network (CNN) embeddings and Optical Character Recognition (OCR) data, extracted from the vessel’s images. This multi-modal approach surpasses the limitations of methods relying solely on visual or textual information. The proposed prototype was evaluated on two distinct datasets. The first dataset contains small vessels without textual data and serves to test the performance of the fine-tuned CNN model in identifying target vessels, trained with a triplet loss function. The second dataset encompasses medium and large-sized vessels amidst challenging conditions, highlighting the advantage of fusing OCR data with CNN embeddings. The results demonstrate the feasibility of a computer vision model that combines OCR data with CNN embeddings for target vessel identification, resulting in significantly enhanced robustness and classification accuracy. The proposed methodology holds promise for advancing the capabilities of autonomous visual monitoring systems deployed by unmanned vehicles, offering a resilient and effective solution for maritime surveillance.
AB - Maritime surveillance is crucial for ensuring compliance with regulations and protecting critical maritime infrastructure. Conventional tracking systems, such as AIS or LRIT, are susceptible to manipulation as they can be switched off or altered. To address this vulnerability, there is a growing need for a visual monitoring system facilitated by unmanned systems such as unmanned aerial vehicles (UAVs) and unmanned surface vehicles (USVs). Equipped with sensors and cameras, these unmanned vehicles collect vast amounts of data that often demand time-consuming manual processing. This study presents a robust method for automatic target vessel re-identification from RGB imagery captured by unmanned vehicles. Our approach uniquely combines visual appearance and textual data recognized from the acquired images to enhance the accuracy of target vessel identification and authentication against a known vessel database. We achieve this through utilizing Convolutional Neural Network (CNN) embeddings and Optical Character Recognition (OCR) data, extracted from the vessel’s images. This multi-modal approach surpasses the limitations of methods relying solely on visual or textual information. The proposed prototype was evaluated on two distinct datasets. The first dataset contains small vessels without textual data and serves to test the performance of the fine-tuned CNN model in identifying target vessels, trained with a triplet loss function. The second dataset encompasses medium and large-sized vessels amidst challenging conditions, highlighting the advantage of fusing OCR data with CNN embeddings. The results demonstrate the feasibility of a computer vision model that combines OCR data with CNN embeddings for target vessel identification, resulting in significantly enhanced robustness and classification accuracy. The proposed methodology holds promise for advancing the capabilities of autonomous visual monitoring systems deployed by unmanned vehicles, offering a resilient and effective solution for maritime surveillance.
KW - Convolutional Neural Network
KW - deep learning
KW - maritime surveillance
KW - Optical Character Recognition
KW - unmanned vehicles
KW - vessel re-identification
UR - http://www.scopus.com/inward/record.url?scp=85213494693&partnerID=8YFLogxK
U2 - 10.1117/12.3028805
DO - 10.1117/12.3028805
M3 - Conference contribution
AN - SCOPUS:85213494693
T3 - Proceedings of SPIE - The International Society for Optical Engineering
BT - SPIE Security + Defence: Proceedings Volume 13206, Artificial Intelligence for Security and Defence Applications II
A2 - Bouma, Henri
A2 - Prabhu, Radhakrishna
A2 - Yitzhaky, Yitzhak
A2 - Kuijf, Hugo J.
PB - Society of Photo-Optical Instrumentation Engineers
Y2 - 16 September 2024 through 19 September 2024
ER -