IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2023)

Hierarchical Disentanglement-Alignment Network for Robust SAR Vehicle Recognition

  • Weijie Li,
  • Wei Yang,
  • Wenpeng Zhang,
  • Tianpeng Liu,
  • Yongxiang Liu,
  • Li Liu

DOI
https://doi.org/10.1109/JSTARS.2023.3324182
Journal volume & issue
Vol. 16
pp. 9661 – 9679

Abstract

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Vehicle recognition is a fundamentale problem in synthetic aperture radar (SAR) image interpretation. However, robustly recognizing vehicle targets is a challenging task in SAR due to the large intraclass variations and small interclass variations. In addition, the lack of large datasets further complicates the task. Inspired by the analysis of target signature variations and deep learning explainability, this article proposes a novel domain alignment framework, named the hierarchical disentanglement-alignment network (HDANet), to achieve robustness under various operating conditions. Concisely, HDANet integrates feature disentanglement and alignment into a unified framework with three modules: domain data generation; multitask-assisted mask disentanglement; and the domain alignment of target features. The first module generates diverse data for alignment, and three simple but effective data augmentation methods are designed to simulate target signature variations. The second module disentangles the target features from background clutter using the multitask-assisted mask to prevent clutter from interfering with subsequent alignment. The third module employs a contrastive loss for domain alignment to extract robust target features from generated diverse data and disentangled features. Finally, the proposed method demonstrates impressive robustness across nine operating conditions in the MSTAR dataset, and extensive qualitative and quantitative analyses validate the effectiveness of our framework.

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