SA-YOLO: The Saliency Adjusted Deep Network for Optical Satellite Image Ship Detection

Shuchen Wang, Hairan Sun, Yihang Zhu, Mingkai Li, Qizhi Xu
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引用次数: 1

Abstract

Ship detection from remote sensing images plays an important role in military and civilian fields. However, since the small size of ship targets and the interference of cloud cover, this task still suffers from great missed detection and false-alarm. To tackle these problems, a Saliency Adjusted YOLO (SA-YOLO) for optical satellite image ship detection is developed. First, due to the fact that the ship in low resolution imagery can be regarded as a salient object, we designed a saliency guided dense sampling layer (SDSL) to improve the spatial sampling of small ship targets. Secondly, the saliency region-aware convolution (SAConv) strategy is designed to improve the representation capability of salient regions and increase the attention of network to these regions. We validated the proposed method using more than 2000 remote sensing images from GF-1 satellite. The experimental results demonstrated that the proposed method obtained a better detection performance than the state-of-the-art methods.
SA-YOLO:用于光学卫星图像船舶检测的显著性调整深度网络
基于遥感图像的船舶检测在军事和民用领域都有着重要的作用。但由于舰船目标体积小,且受云层的干扰,该任务存在较大的漏检和虚警问题。为了解决这些问题,研制了一种用于光学卫星图像舰船检测的显著性校正YOLO (SA-YOLO)。首先,由于舰船在低分辨率图像中可以被视为显著目标,我们设计了一种显著性引导密集采样层(SDSL)来改善对小型舰船目标的空间采样。其次,设计显著性区域感知卷积(SAConv)策略,提高显著性区域的表示能力,增加网络对这些区域的关注。我们利用GF-1卫星的2000多幅遥感图像验证了所提出的方法。实验结果表明,该方法比现有方法具有更好的检测性能。
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