IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2024)

YOLO-RC: SAR Ship Detection Guided by Characteristics of Range-Compressed Domain

  • Xiangdong Tan,
  • Xiangguang Leng,
  • Ru Luo,
  • Zhongzhen Sun,
  • Kefeng Ji,
  • Gangyao Kuang

DOI
https://doi.org/10.1109/JSTARS.2024.3478390
Journal volume & issue
Vol. 17
pp. 18834 – 18851

Abstract

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Conventional ship detection using synthetic aperture radar (SAR) is typically limited to fully-focused SAR images, limiting the development of real-time SAR ship detection. Ship detection in the SAR range-compressed domain holds significant real-time potential as it obviates the need for complete imaging and reduces data transmission. However, range-compressed data are solely compressed in range, resulting in a defocused representation in azimuth, which differs from SAR images. The previously proposed methods often fail to effectively incorporate the characteristics of range-compressed domain. In light of this circumstance, we propose an SAR ship detection network, YOLO-range compressed (YOLO-RC), which utilizes amplitude gradient and geometric scale characteristics in the range-compressed domain for improved performance. In YOLO-RC, amplitude gradient guided feature extraction module is specifically designed to leverage the different gradient variation trends of ship in both the range and azimuth dimensions. Moreover, we incorporate a large receptive field pyramid head, employing a pyramid-like structure to enhance receptive field and achieve more precise fitting of ship geometry for improved detection capability. Considering the scarcity of range-compressed ship samples, we conduct experiments using a publicly available self-built dataset. Experimental results on the dataset demonstrate that the proposed network achieves an F1-score of 83.78% and an average precision of 84.09%, outperforming most existing SAR ship detection methods with better detection capability in SAR range-compressed domain.

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