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基于DCGLA-IMM算法的复杂机动目标跟踪方法*

王克乾1,2,3, 赵灵峰1,2, 刘会杰1,2,3†   

  1. 1 中国科学院微小卫星创新研究院,上海 201304;
    2 中国科学院大学,北京 100049;
    3 合肥国家实验室,合肥 230088
  • 收稿日期:2025-12-10 修回日期:2026-02-04 发布日期:2026-02-04
  • 通讯作者: †E-mail:liuhj@microsate.com
  • 基金资助:
    *中国科学院重点部署项目资助

Complex maneuvering target tracking method based on DCGLA-IMM algorithm

WANG Keqian1,2,3, ZHAO Lingfeng1,2, LIU Huijie1,2,3   

  1. 1 Innovation Academy for Microsatellites of Chinese Academy of Sciences, Shanghai 201304, China;
    2 University of Chinese Academy of Sciences, Beijing 100049, China;
    3 Hefei National Laboratory, Hefei 230088, China
  • Received:2025-12-10 Revised:2026-02-04 Published:2026-02-04

摘要: 在目标跟踪领域,复杂机动目标的动态特性对算法的鲁棒性与精度提出严峻挑战。传统交互式多模型算法由于采用固定模型参数与转移概率矩阵,在运动模型切换时易产生响应滞后与较大瞬态误差;同时,对输入序列时序特征的挖掘能力有限,导致复杂场景下跟踪性能受限。为此,本文在BiLSTM-IMM框架上提出DCGLA-IMM算法,通过深度时序建模与注意力机制增强特征提取和动态适应能力。算法利用可学习膨胀率的因果卷积实现多时间尺度局部特征提取,结合残差连接的双层BiLSTM强化长程时序建模,并引入全局—局部门控混合注意力以实现局部细节与全局趋势的自适应平衡;最后由GRU整合序列信息,通过多预测头输出各运动模型概率,并完成概率校正与状态融合。仿真实验结果表明,在同结构运动模型参数时变与多模型切换2类复杂场景下,所提算法相较BiLSTM-IMM的RMSE分别降低10.07%与9.14%,在模型概率响应延迟与概率质量等指标上亦取得更优表现,验证了该方法在复杂机动目标跟踪中的精度提升与鲁棒性增强。

关键词: 目标跟踪, 交互式多模型, 可学习膨胀因果卷积, 全局-局部门控注意力, 深度学习

Abstract: In target tracking, the dynamic characteristics of highly maneuvering targets pose significant challenges to the robustness and accuracy of tracking algorithms. Traditional Interactive Multiple Model algorithms employ fixed model parameters and transition probability matrices, which often lead to response delays and large transient errors during motion model switching. In addition, their limited capability in exploiting temporal features of input sequences restricts tracking performance in complex scenarios. To address these issues, this paper proposes a DCGLA-IMM algorithm based on the BiLSTM-IMM framework, in which deep temporal modeling and attention mechanisms are introduced to enhance feature extraction and dynamic adaptability. Specifically, causal convolution with learnable dilation rates is utilized to extract multi-scale local temporal features, while a two-layer BiLSTM with residual connections is employed to strengthen long-range temporal modeling. Furthermore, a global-local gated hybrid attention mechanism is incorporated to achieve adaptive fusion of local details and global trends. Finally, a GRU integrates sequential information, and multiple prediction heads output the probabilities of different motion models, followed by probability correction and state fusion. Simulation results demonstrate that, under two challenging scenarios with time-varying parameters of fixed-structure motion models and multi-model switching, the proposed algorithm reduces the RMSE by 10.07% and 9.14%, respectively, compared with the BiLSTM-IMM. It also achieves superior performance in terms of model probability response delay and probability quality metrics, thereby validating its improved accuracy and robustness for tracking highly maneuvering targets.

Key words: maneuvering target tracking, interacting multiple model, learnable dilated causal convolution, global-local gated attention, deep learning

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