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Attentional Feature Refinement and Alignment Network for Aircraft Detection in SAR Imagery

Authors :
Zhao, Yan
Zhao, Lingjun
Liu, Zhong
Hu, Dewen
Kuang, Gangyao
Liu, Li
Publication Year :
2022

Abstract

Aircraft detection in Synthetic Aperture Radar (SAR) imagery is a challenging task in SAR Automatic Target Recognition (SAR ATR) areas due to aircraft's extremely discrete appearance, obvious intraclass variation, small size and serious background's interference. In this paper, a single-shot detector namely Attentional Feature Refinement and Alignment Network (AFRAN) is proposed for detecting aircraft in SAR images with competitive accuracy and speed. Specifically, three significant components including Attention Feature Fusion Module (AFFM), Deformable Lateral Connection Module (DLCM) and Anchor-guided Detection Module (ADM), are carefully designed in our method for refining and aligning informative characteristics of aircraft. To represent characteristics of aircraft with less interference, low-level textural and high-level semantic features of aircraft are fused and refined in AFFM throughly. The alignment between aircraft's discrete back-scatting points and convolutional sampling spots is promoted in DLCM. Eventually, the locations of aircraft are predicted precisely in ADM based on aligned features revised by refined anchors. To evaluate the performance of our method, a self-built SAR aircraft sliced dataset and a large scene SAR image are collected. Extensive quantitative and qualitative experiments with detailed analysis illustrate the effectiveness of the three proposed components. Furthermore, the topmost detection accuracy and competitive speed are achieved by our method compared with other domain-specific,e.g., DAPN, PADN, and general CNN-based methods,e.g., FPN, Cascade R-CNN, SSD, RefineDet and RPDet.<br />Comment: A raw version as the same as the early access published in TGRS. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.07124
Document Type :
Working Paper
Full Text :
https://doi.org/10.1109/TGRS.2021.3139994