TL;DR
This paper introduces R-DFPN, a novel multi-scale rotation dense feature pyramid network that effectively detects ships in complex remote sensing scenes, improving accuracy and reducing redundant detections.
Contribution
The paper proposes R-DFPN with dense feature pyramid and rotation anchors, enhancing ship detection in diverse scenes and addressing issues of object scale, rotation, and dense arrangements.
Findings
Achieved state-of-the-art detection performance on Google Earth images.
Effectively reduces redundant detection regions and improves recall.
Enhances feature propagation and reuse across scales.
Abstract
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 detection region. In order to solve such problems above, we propose a framework called Rotation Dense Feature Pyramid Networks (R-DFPN) which can effectively detect ship in different scenes including ocean and port. Specifically, we put forward the Dense Feature Pyramid Network (DFPN), which is aimed at solving the problem resulted from the narrow width of the ship. Compared with previous multi-scale detectors such as Feature Pyramid Network (FPN), DFPN builds the high-level semantic feature-maps for all scales by means of dense connections, through which enhances the feature…
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