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基于卡尔曼滤波补偿传感器数据滞后的时间配准

Time registration based on Kalman filter for sensor data delay compensation

  • 摘要: 为了解决多传感器光电跟踪系统中由于传感器不同步导致后续的数据融合性能下降的问题,采用卡尔曼滤波与拉格朗日插值相结合的方法,对异步数据融合的前期数据处理方法进行了研究,实现了多传感器采样序列的时间配准。采用卡尔曼滤波对传感器数据进行预测,在抑制过程噪声和测量噪声的同时,补偿了传感器滞后;针对卡尔曼滤波预测后建立了新采样数值序列;最后运用拉格朗日插值法将异步的数据归整到统一的采样频率,为高性能的异步数据融合准备好了同步的原始数据。通过多传感器光电跟踪系统跟踪切向飞行目标的典型工况进行仿真,验证了方法的有效性,取得了可反映真实目标轨迹的配准数据。结果表明,雷达配准精度优于1°,光电传感器配准精度达到角分级,且实现过程简单可靠。这一结果可满足光电跟踪系统工程应用的需求。

     

    Abstract: To address the issue of degraded data fusion performance caused by asynchronous sensors in multi-sensor electro-optical tracking systems, a method combining Kalman filter with Lagrange interpolation was adopted to study the preprocessing methods for asynchronous data fusion, achieving time registration of multi-sensor sampling sequences. Specifically, Kalman filter was used to predict sensor data, which suppressed process noise and measurement noise while compensating for sensor delay. Based on the new sampling sequence obtained from Kalman filter, the Lagrange interpolation was then used to normalize the asynchronous data to a unified sampling frequency, which prepared the synchronized raw data for high-performance asynchronous data fusion. A simulation of tracking a tangentially flying target with a multi-sensor electro-optical tracking system under typical conditions was conducted, verifying the effectiveness of the proposed method and obtaining registration data that could reflect the real target trajectory. The results showed that the radar registration accuracy was better than 1° and the electro-optical sensor achieved registration accuracy at the angular level, with a simple and reliable implementation process. The findings meet the requirements for engineering applications in electro-optical tracking systems.

     

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