MidNet: An Anchor-and-Angle-Free Detector for Oriented Ship Detection in
Aerial Images
- URL: http://arxiv.org/abs/2111.10961v1
- Date: Mon, 22 Nov 2021 02:52:30 GMT
- Title: MidNet: An Anchor-and-Angle-Free Detector for Oriented Ship Detection in
Aerial Images
- Authors: Feng Jie, Yuping Liang, Junpeng Zhang, Xiangrong Zhang, Quanhe Yao,
Licheng Jiao
- Abstract summary: We propose a novel detector deploying a center and four midpoints for encoding each oriented object, namely MidNet.
On two public ship detection datasets, MidNet outperforms the state-of-the-art detectors by achieving APs of 90.52% and 86.50%.
- Score: 32.92312549385758
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Ship detection in aerial images remains an active yet challenging task due to
arbitrary object orientation and complex background from a bird's-eye
perspective. Most of the existing methods rely on angular prediction or
predefined anchor boxes, making these methods highly sensitive to unstable
angular regression and excessive hyper-parameter setting. To address these
issues, we replace the angular-based object encoding with an
anchor-and-angle-free paradigm, and propose a novel detector deploying a center
and four midpoints for encoding each oriented object, namely MidNet. MidNet
designs a symmetrical deformable convolution customized for enhancing the
midpoints of ships, then the center and midpoints for an identical ship are
adaptively matched by predicting corresponding centripetal shift and matching
radius. Finally, a concise analytical geometry algorithm is proposed to refine
the centers and midpoints step-wisely for building precise oriented bounding
boxes. On two public ship detection datasets, HRSC2016 and FGSD2021, MidNet
outperforms the state-of-the-art detectors by achieving APs of 90.52% and
86.50%. Additionally, MidNet obtains competitive results in the ship detection
of DOTA.
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