Deep Learning (DL) algorithms need extensive amounts of data for classification tasks, which can be costly in specialized fields like maritime monitoring. To address data scarcity, we propose a fine-tuning approach leveraging complementary Infrared (IR) and Synthetic Aperture Radar (SAR) datasets. We evaluated our method using the ISDD, HRSID, and FuSAR datasets, employing VGG16 as a shared backbone integrated with Faster R-CNN (for ship detection) and a three-layer classifier (for ship classification). The results showed significant improvements in IR ship detection (mAP: +20%; Recall: +17%) and modest but consistent gains in SAR ship detection tasks (F1-score: +3%, Recall: +1%, mAP: +1%). Our findings highlight the effectiveness of domain adaptation in improving DL’s performance under limited data conditions.

SAR-to-Infrared Domain Adaptation for Maritime Surveillance with Limited Data / Awais, Ch Muhammad; Reggiannini, Marco; Davide Moroni, Davide; Galdelli, Alessandro. - In: PROCEEDINGS. - ISSN 2504-3900. - 129:1(2025). [10.3390/proceedings2025129066]

SAR-to-Infrared Domain Adaptation for Maritime Surveillance with Limited Data

Galdelli, Alessandro
2025-01-01

Abstract

Deep Learning (DL) algorithms need extensive amounts of data for classification tasks, which can be costly in specialized fields like maritime monitoring. To address data scarcity, we propose a fine-tuning approach leveraging complementary Infrared (IR) and Synthetic Aperture Radar (SAR) datasets. We evaluated our method using the ISDD, HRSID, and FuSAR datasets, employing VGG16 as a shared backbone integrated with Faster R-CNN (for ship detection) and a three-layer classifier (for ship classification). The results showed significant improvements in IR ship detection (mAP: +20%; Recall: +17%) and modest but consistent gains in SAR ship detection tasks (F1-score: +3%, Recall: +1%, mAP: +1%). Our findings highlight the effectiveness of domain adaptation in improving DL’s performance under limited data conditions.
2025
domain adaptation, ship classification, remote sensing, infrared, SAR
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/347762
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