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HTC+ for SAR Ship Instance Segmentation

Tianwen Zhang, Xiaoling Zhang

2022Remote Sensing59 citationsDOIOpen Access PDF

Abstract

Existing instance segmentation models mostly pay less attention to the targeted characteristics of ships in synthetic aperture radar (SAR) images, which hinders further accuracy improvements, leading to poor segmentation performance in more complex SAR image scenes. To solve this problem, we propose a hybrid task cascade plus (HTC+) for better SAR ship instance segmentation. Aiming at the specific SAR ship task, seven techniques are proposed to ensure the excellent performance of HTC+ in more complex SAR image scenes, i.e., a multi-resolution feature extraction network (MRFEN), an enhanced feature pyramid net-work (EFPN), a semantic-guided anchor adaptive learning network (SGAALN), a context ROI extractor (CROIE), an enhanced mask interaction network (EMIN), a post-processing technique (PPT), and a hard sample mining training strategy (HSMTS). Results show that each of them offers an observable accuracy gain, and the instance segmentation performance in more complex SAR image scenes becomes better. On two public datasets SSDD and HRSID, HTC+ surpasses the other nine competitive models. It achieves 6.7% higher box AP and 5.0% higher mask AP than HTC on SSDD. These are 4.9% and 3.9% on HRSID.

Topics & Concepts

Computer scienceArtificial intelligenceSegmentationPyramid (geometry)Synthetic aperture radarComputer visionFeature (linguistics)Context (archaeology)Image segmentationFeature extractionPattern recognition (psychology)GeologyLinguisticsPhysicsPaleontologyOpticsPhilosophyAdvanced Neural Network ApplicationsAdvanced SAR Imaging TechniquesDomain Adaptation and Few-Shot Learning
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