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Automatic Ship Detection in Remote Sensing Images from Google Earth of Complex Scenes Based on Multiscale Rotation Dense Feature Pyramid Networks

机译:基于多尺度旋转密集特征金字塔网络的复杂场景谷歌地球遥感图像自动检测

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Ship detection has been playing a significant role in the field of remote sensing for a long time, but it is still full of challenges. The main limitations of traditional ship detection methods usually lie in the complexity of application scenarios, the difficulty of intensive object detection, and the redundancy of the detection region. In order to solve these problems above, we propose a framework called Rotation Dense Feature Pyramid Networks (R-DFPN) which can effectively detect ships in different scenes including ocean and port. Specifically, we put forward the Dense Feature Pyramid Network (DFPN), which is aimed at solving problems resulting from the narrow width of the ship. Compared with previous multiscale detectors such as Feature Pyramid Network (FPN), DFPN builds high-level semantic feature-maps for all scales by means of dense connections, through which feature propagation is enhanced and feature reuse is encouraged. Additionally, in the case of ship rotation and dense arrangement, we design a rotation anchor strategy to predict the minimum circumscribed rectangle of the object so as to reduce the redundant detection region and improve the recall. Furthermore, we also propose multiscale region of interest (ROI) Align for the purpose of maintaining the completeness of the semantic and spatial information. Experiments based on remote sensing images from Google Earth for ship detection show that our detection method based on R-DFPN representation has state-of-the-art performance.
机译:长期以来,船舶探测在遥感领域一直发挥着重要作用,但仍然充满挑战。传统船舶探测方法的主要局限性通常在于应用场景的复杂性,密集物体探测的难度以及探测区域的冗余性。为了解决上述问题,我们提出了一种称为旋转密集特征金字塔网络(R-DFPN)的框架,该框架可以有效地检测包括海洋和港口在内的不同场景中的船只。具体来说,我们提出了密集特征金字塔网络(DFPN),其目的是解决由于船宽而引起的问题。与以前的多尺度检测器(例如,特征金字塔网络(FPN))相比,DFPN通过密集连接为所有尺度构建了高级语义特征图,从而增强了特征传播并鼓励了特征重用。另外,在船舶旋转和密集布置的情况下,我们设计了一种旋转锚策略来预测物体的最小外接矩形,从而减少了多余的检测区域并提高了召回率。此外,为了保持语义和空间信息的完整性,我们还提出了多尺度感兴趣区域(ROI)对齐。基于Google Earth的遥感图像进行舰船检测的实验表明,我们基于R-DFPN表示法的检测方法具有最先进的性能。

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