Naval intelligence plays a critical role in multi-domain operations by identifying and tracking vessels of interest, especially suspected “dark ships” operating in an emissions-controlled (EMCON) state. While applying machine learning (ML) to maritime satellite imagery could enable an automated open-ocean search capability for dark ships, ensuring the robustness of ML models to environmental variations in the maritime domain remains a challenge because training sets do not encapsulate all possible environmental conditions. To address the challenge of unsupervised domain adaptation (UDA) in ship classification, i.e. transferring a ML model from a labeled source domain to an unlabeled target domain, we propose employing combinations of semi-supervised learning (SSL) techniques with standalone UDA approaches. Specifically, we incorporate combinations of FixMatch, minimum class confusion, gradient reversal, and mixup augmentation into the standard cross-entropy supervised loss function. These interventions were compared in two domain shift settings, one in which the source and target domains are both comprised of simulated data, and another in which the source domain consists of only simulated data, and the target domain consists of only real data. Experimental results comparing the combinations of interventions to a regularized fine-tuning baseline demonstrate that the greatest improvements in model robustness were achieved when combinations of our SSL strategy (FixMatch) and UDA algorithms were incorporated into training.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Semi-supervised domain transfer for robust maritime satellite image classification



    Conference:

    Artificial Intelligence and Machine Learning for Multi-Domain Operations Applications V ; 2023 ; Orlando, Florida, United States


    Published in:

    Proc. SPIE ; 12538


    Publication date :

    2023-06-12





    Type of media :

    Conference paper


    Type of material :

    Electronic Resource


    Language :

    English



    Learnable Subspace Orthogonal Projection for Semi-supervised Image Classification

    Li, Lijian / Zhang, Yunhe / Huang, Aiping | British Library Conference Proceedings | 2023


    Adversarial Semi-supervised Multi-domain Tracking

    Meshgi, Kourosh / Mirzaei, Maryam Sadat | British Library Conference Proceedings | 2021


    Semi-supervised classification using multiple clusterings

    Yu, G. X. / Feng, L. / Yao, G. J. et al. | British Library Online Contents | 2016



    Robust Satellite Image Classification with Bayesian Deep Learning

    Pang, Yutian / Cheng, Sheng / Hu, Jueming et al. | IEEE | 2022