杂乱
遥感
雷达地平仪
地质学
雷达成像
计算机科学
雷达跟踪器
雷达
预警雷达
人工智能
雷达探测
雷达信号处理
双基地雷达
连续波雷达
合成孔径雷达
静止目标指示
恒虚警率
天基雷达
计算机视觉
雷达工程细节
雷达锁定
三维雷达
目标检测
脉冲多普勒雷达
雷达配置和类型
反向散射(电子邮件)
侧视机载雷达
模式识别(心理学)
逆合成孔径雷达
检测前跟踪
连贯性(哲学赌博策略)
匹配滤波器
动目标指示
二次监视雷达
信噪比(成像)
作者
Hsin-Yi Liu,Ching‐Hung Lee
标识
DOI:10.1109/jsen.2026.3690252
摘要
Maritime surveillance radar plays a vital role in ocean monitoring and navigational safety; however, the detection of small targets is often compromised by complex, nonstationary sea clutter. Existing deep learning–based clutter suppression approaches predominantly rely on supervised training with pixel-level annotations, which are impractical in operational maritime environments due to the non-cooperative nature of targets and the lack of reliable ground truth. To address these limitations, this paper presents Twin SEUNet-CL, an unsupervised framework for sea clutter suppression trained exclusively on unlabeled radar imagery. The proposed architecture employs twin squeeze-and-excitation U-Nets to learn complementary feature representations while exploiting channel-wise attention to enhance target-related responses and suppress clutter. To enable effective label-free discrimination, a contrastive learning strategy with hard-negative mining is introduced using complementary image pairs. Furthermore, a Jensen–Shannon divergence–based mutual information regularization term is incorporated between dense local features and predicted class-probability maps to stabilize the learned representation space. Experimental results on both simulated datasets and real maritime radar measurements show that Twin SEUNet-CL significantly improves detection probability at low false-alarm rates under severe clutter conditions, and exhibits robust sim-to-real transfer when trained on simulated data and evaluated on unseen real rain-clutter measurements without fine-tuning.
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