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Collaborative Sensor Registration without a Priori Association

机译:没有先验关联的协作传感器注册

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摘要

Sensor registration is an important prerequisite for successful multi-sensor data fusion. In this paper, we consider a cooperative sensor registration scenario that the Precise Location Messages (PLM) can be received by the tracker periodically from cooperative targets through wireless data link and utilized to estimate sensor systematic biases. A 2-D sensor registration algorithm is presented to jointly estimate the site location bias and the measurement bias without a priori knowledge of track-to-track association. At first, a point set is obtained by mapping all possible pairs of sensor and PLM measurements. Next, a credit function is defined as the arithmetic mean of the likelihood function of these points. Since the registration biases can be estimated by finding the maximum credit point, a two-step searching algorithm is proposed to jointly estimate location and measurement biases. Its statistical performance is compared to the hybrid Cramér-Rao lower bound (HCRLB).
机译:传感器配准是成功进行多传感器数据融合的重要前提。在本文中,我们考虑了一种协作式传感器注册方案,即跟踪器可以通过无线数据链路定期从协作目标接收精确位置消息(PLM),并将其用于估计传感器系统偏差。提出了一种二维传感器配准算法,以联合估算站点位置偏差和测量偏差,而无需先验地了解轨道间的关联。首先,通过映射所有可能的传感器和PLM测量对获取点集。接下来,将信用函数定义为这些点的似然函数的算术平均值。由于可以通过找到最大信用点来估计注册偏差,因此提出了一种两步搜索算法来联合估计位置偏差和测量偏差。将其统计性能与混合式Cramér-Rao下限(HCRLB)进行了比较。

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