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Bayesian unified registration and tracking

机译:贝叶斯统一注册和跟踪

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摘要

Multitarget detection and tracking algorithms typically presume that sensors are spatially registered-i.e., that all sensor states are precisely specified with respect to some common coordinate system. In actuality, sensor observations may be contaminated by unknown spatial misregistration biases. This paper demonstrates that these biases can be estimated by exploiting the data collected from a sufficiently large number of unknown targets, in a unified methodology in which sensor registration and multitarget tracking are performed jointly in a fully unified fashion. We show how to (1) model single-sensor bias, (2) integrate the biased sensors into a single probabilistic multiplatform-multisensor-multitarget system, (3) construct the optimal solution to the joint registration/tracking problem, and (4) devise a principled computational approximation of this optimal solution. The approach does not presume the availability of GPS or other inertial information.
机译:多目标检测和跟踪算法通常假定传感器在空间上对齐,即,相对于某个公共坐标系精确指定了所有传感器状态。实际上,传感器的观察结果可能会受到未知的空间配准偏差的污染。本文证明,可以通过采用以完全统一的方式联合执行传感器配准和多目标跟踪的统一方法,利用从足够多的未知目标收集的数据来估计这些偏差。我们展示了如何(1)对单传感器偏置进行建模,(2)将偏置传感器集成到单个概率多平台-多传感器-多目标系统中,(3)构造针对联合配准/跟踪问题的最佳解决方案,以及(4)设计该最佳解决方案的原则上的计算近似值。该方法不假定GPS或其他惯性信息的可用性。

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