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Debiased converted measurement Kalman filter algorithm for optic-electric target tracking

机译:用于光电目标跟踪的去偏转换测量卡尔曼滤波算法

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When using optic-electric devices for target tracking, due to target obscured, measurement equipment, and so on, so that the measurement data will be lost or singular value. Therefore, this paper designed an improved debiased converted measurement Kalman filter (RDCMKF). The idea of the method is that calculate out a scaling factor through the target measured values and predicted values. Then adding the scaling factor in status updates so only the data of the faulty sensor is scaled. Thus the algorithm has good robustness. And because of the scaling factor is associated with the measured value and predicted value of target, any unnecessary target information loss is prevented. The simulation results show that new debiased converted measurement Kalman filtering has a better robustness than the traditional debiased converted measurement Kalman filtering when the measurement data is missing or outliers. When the measurement data is outliers, the peak of the former's filtering position error reduced almost 90% than the latter.
机译:使用光电设备进行目标跟踪时,由于目标被遮挡,测量设备等原因,导致测量数据丢失或奇异值。因此,本文设计了一种改进的去偏置转换测量卡尔曼滤波器(RDCMKF)。该方法的思想是通过目标测量值和预测值计算出比例因子。然后在状态更新中添加比例因子,以便仅对故障传感器的数据进行比例缩放。因此该算法具有良好的鲁棒性。并且由于比例因子与目标的测量值和预测值相关联,因此可以防止任何不必要的目标信息丢失。仿真结果表明,当测量数据丢失或离群时,新的去偏转换后的测量卡尔曼滤波比传统的去偏转换后的测量卡尔曼滤波具有更好的鲁棒性。当测量数据离群时,前者的滤波位置误差的峰值比后者降低了近90%。

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