TY - JOUR
T1 - SAR target recognition based on hierarchical azimuth aware feature enhancement network
AU - Chen, Shichao
AU - Dong, Zhenning
AU - Liu, Ming
AU - Tao, Mingliang
AU - Fan, Yifei
N1 - Publisher Copyright:
© 2026 Elsevier Ltd. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
PY - 2026/8/15
Y1 - 2026/8/15
N2 - Synthetic aperture radar (SAR) target recognition faces critical challenges due to the azimuth sensitivity of the imaging mechanism, which induces significant intra-class variance. This issue is further exacerbated under extended operating conditions (EOCs), such as noise, occlusion and depression variations etc. severely degrade recognition performance. To address these limitations, this paper proposes a hierarchical azimuth aware feature enhancement network (HAAFENet). Distinct from conventional methods, HAAFENet explicitly embeds azimuth priors into the deep learning framework to extract robust, orientation-invariant representations. Specifically, a novel azimuth aware feature enhancement module (AAFEM) is designed to dynamically generate parameters for adaptive channel and spatial modulation based on the target’s orientation. To preserve feature representativeness, a hierarchical feature fusion module (HFFM) is incorporated to integrate deep semantic features with shallow geometric details. Furthermore, we introduce two synergistic loss functions to optimize the feature space: (1) an azimuth difference feature consistency loss, which utilizes contrastive learning to enforce intra-class feature similarity across large angular variations; (2) a dynamic angular margin loss, which adjusts classification boundaries based on the equivalent number of looks (ENL) to rigorously constrain images corrupted by speckle noise. Extensive experiments on the MSTAR and SARSIM datasets demonstrate that HAAFENet achieves excellent performance, exhibiting superior robustness and discriminability under both standard and diverse extended operating condition.
AB - Synthetic aperture radar (SAR) target recognition faces critical challenges due to the azimuth sensitivity of the imaging mechanism, which induces significant intra-class variance. This issue is further exacerbated under extended operating conditions (EOCs), such as noise, occlusion and depression variations etc. severely degrade recognition performance. To address these limitations, this paper proposes a hierarchical azimuth aware feature enhancement network (HAAFENet). Distinct from conventional methods, HAAFENet explicitly embeds azimuth priors into the deep learning framework to extract robust, orientation-invariant representations. Specifically, a novel azimuth aware feature enhancement module (AAFEM) is designed to dynamically generate parameters for adaptive channel and spatial modulation based on the target’s orientation. To preserve feature representativeness, a hierarchical feature fusion module (HFFM) is incorporated to integrate deep semantic features with shallow geometric details. Furthermore, we introduce two synergistic loss functions to optimize the feature space: (1) an azimuth difference feature consistency loss, which utilizes contrastive learning to enforce intra-class feature similarity across large angular variations; (2) a dynamic angular margin loss, which adjusts classification boundaries based on the equivalent number of looks (ENL) to rigorously constrain images corrupted by speckle noise. Extensive experiments on the MSTAR and SARSIM datasets demonstrate that HAAFENet achieves excellent performance, exhibiting superior robustness and discriminability under both standard and diverse extended operating condition.
KW - Azimuth aware
KW - Extendedoperatingconditions (EOCs)
KW - Synthetic aperture radar (SAR)
KW - Target recognition
UR - https://www.scopus.com/pages/publications/105036243034
U2 - 10.1016/j.eswa.2026.132487
DO - 10.1016/j.eswa.2026.132487
M3 - 文章
AN - SCOPUS:105036243034
SN - 0957-4174
VL - 323
JO - Expert Systems with Applications
JF - Expert Systems with Applications
M1 - 132487
ER -