Learning Polar Encodings for Arbitrary-Oriented Ship Detection in SAR Images.
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Date
2021Author
He, Yishan
Gao, Fei
Wang, Jun
Hussain, Amir
Yang, Erfu
Zhou, Huiyu
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Common horizontal bounding box-based methods are not capable of accurately locating slender ship targets with arbitrary orientations in synthetic aperture radar (SAR) images. Therefore, in recent years, methods based on oriented bounding box (OBB) have gradually received attention from researchers. However, most of the recently proposed deep learning-based methods for OBB detection encounter the boundary discontinuity problem in angle or key point regression. In order to alleviate this problem, researchers propose to introduce some manually set parameters or extra network branches for distinguishing the boundary cases, which make training more difficult and lead to performance degradation. In this article, in order to solve the boundary discontinuity problem in OBB regression, we propose to detect SAR ships by learning polar encodings. The encoding scheme uses a group of vectors pointing from the center of the ship target to the boundary points to represent an OBB. The boundary discont.....
Journal
IEEE Journal of Selected Topics In Applied Earth Observations And Remote SensingVolume
14Issue
Article 9385869Page Range
pp.3846 - 3859Document Language
enSustainable Development Goals (SDG)
14.aMaturity Level
Pilot or DemonstratedSpatial Coverage
Polar RegionsDOI Original
http://dx.doi.org/10.1109/JSTARS.2021.3068530Citation
He, Y., Gao, F., Wang, J., Hussain, A., Yang, E. and Zhou, H. (2021) Learning Polar Encodings for Arbitrary-Oriented Ship Detection in SAR Images. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 14:9385869, pp.3846–3859. DOI: https://doi.org/10.1109/JSTARS.2021.3068530Collections
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