基于特征增强和特征压缩的模型在线更新方法

    Online Model Update Method Based on Feature Augmentation and Compression

    • 摘要: 雷达自动目标识别(RATR)与逆合成孔径雷达(ISAR)技术在现代电子战与目标探测中具有重要地位。ISAR具备在复杂环境下获取高速运动目标高分辨率图像的能力,广泛应用于目标识别、跟踪、反隐身及电子对抗等军事任务。随着战场环境日益复杂、目标种类不断增多,传统识别系统面临适应性不足与灾难性遗忘问题,难以满足持续更新与精准识别的需求。文中面向持续学习场景,提出一种具备抗遗忘能力的目标识别方法,通过样本回放与特征增强缓解新旧样本不平衡导致的性能下降。同时,采用残差拟合与知识蒸馏等机制提升识别性能并压缩模型结构,实现稳定性与可塑性的有效平衡。该方法在提升模型适应性和部署效率方面展现出良好潜力,为雷达目标持续识别任务提供了有力支持,具有重要的应用前景。

       

      Abstract: Radar automatic target recognition (RATR) and inverse synthetic aperture radar (ISAR) technologies play a crucial role in modern electronic warfare and target detection. ISAR enables high-resolution imaging of fast-moving targets in complex environments, with wide applications in target recognition, tracking, stealth detection, and electronic countermeasures. As battlefield scenarios become increasingly complex and the diversity of targets grows, traditional recognition systems struggle with limited adaptability and the problem of catastrophic forgetting, making them inadequate for continuous updates and accurate identification. To address these challenges, this paper proposes a continual learning framework with enhanced anti-forgetting capabilities. By integrating exemplar replay and feature augmentation strategies, the proposed method alleviates the performance degradation caused by the imbalance between new and old classes. In addition, residual fitting and knowledge distillation techniques are employed to capture inter-class variations and reduce model complexity, enabling a better balance between stability and plasticity. This approach demonstrates strong potential in improving the adaptability and efficiency of radar target recognition systems, providing an effective solution for continual learning in dynamic and evolving battlefield environments.

       

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