基于孪生长短期记忆网络的角轨迹快速关联方法

A Fast Association Method for Angular Trajectories Based on Siamese Long Short Term Memory Network

  • 摘要: 随着空间目标数量的快速增长,利用天基光学系统对空间目标进行定位对空间安全有着重要意义. 角轨迹关联作为多星协同定位中的关键环节,传统基于几何或运动学约束的关联方法面临组合爆炸、噪声敏感与实时性差等挑战. 本文提出一种基于深度学习的角轨迹快速关联方法,通过构建多星多目标仿真场景,生成仿真角轨迹数据,并设计基于孪生长短期记忆的神经网络进行角轨迹关联. 试验结果表明,所提方法相较于传统方法在准确率上提升约3%,在推理时间上减少超过9倍. 因此,该方法能够在保持高准确率的同时,显著提升空间多目标轨迹的关联速度,为空间多目标关联研究提供参考.

     

    Abstract: With the rapid growth in the number of space objects, the utilization of space-based optical systems for space object positioning holds significant importance for space security. As a critical component in multi-satellite collaborative positioning, angular trajectory association faces challenges with traditional geometry or kinematics-based methods, including combinatorial explosion, noise sensitivity, and poor real-time performance. This paper proposes a deep learning-based fast angular trajectory association method. By constructing multi-satellite multi-target simulation scenarios, simulated angular trajectory data are generated, and a Siamese long short-term memory network is designed for angular trajectory association. Experimental results demonstrate that, compared with traditional methods, the proposed method improves accuracy by about 3% and reduces inference time by more than 9 times. Therefore, this method can significantly increase the association speed of space multi-target trajectories while maintaining high accuracy, providing a reference for research on space objects’ trajectory association.

     

/

返回文章
返回