IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2021)

Multitask Learning for Ship Detection From Synthetic Aperture Radar Images

  • Xin Zhang,
  • Chunlei Huo,
  • Nuo Xu,
  • Hangzhi Jiang,
  • Yong Cao,
  • Lei Ni,
  • Chunhong Pan

DOI
https://doi.org/10.1109/JSTARS.2021.3102989
Journal volume & issue
Vol. 14
pp. 8048 – 8062

Abstract

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Ship detection from synthetic aperture radar (SAR) images is inherently subject to the special imaging mechanism of SAR. In recent years, deep-learning-based techniques for detecting objects from optical images have rapidly advanced and promoted the development of SAR image detection technology. However, the strong speckle noise in SAR images degrades low-level feature learning in shallow layers, hindering the higher level learning of semantic features for object detection. In view of the problems encountered in direct end-to-end feature learning for object detection and the close relationship between objects and auxiliary cues, a multitask learning-based object detector (MTL-Det) is proposed in this article to distinguish ships in SAR images. The proposed approach models the ship detection problem, not as a single object detection task, but as three cooperative tasks. The model involves two auxiliary subtasks that are focused on learning object-specific cues (e.g., texture and shape) for the ship detection task, which is constrained by the pseudoground truth generated by the main task. Assisted by auxiliary subtasks, the low-level features are robust to speckle noise and reliably support high-level feature learning. Compared with traditional single-task-based object detectors, more discriminative object-specific features are learned by multitask learning without the extra cost of manual labeling. The experiments conducted in this study help demonstrate the advantages of MTL-Det in improving the ship detection performance on two SAR datasets: high-resolution SAR images dataset and large-scale SAR ship detection dataset-v1.0.

Keywords