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Intelligent Automation Inc. Rockville, MD, U.S.A.

机译:智能自动化Inc. Rockville,MD,U.S.A.

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Tracking performance is a function of data quality, tracker type, and target maneuverability. Many contemporary tracking methods are useful for various operating conditions. To determine nonlinear tracking performance independent of the scenario, we wish to explore metrics that highlight the tracker capability. With the emerging relative track metrics, as opposed to rool-mean-square error (RMS) calculations, we explore the Averaged Normalized Estimation Error Squared (ANESS) and Non Credibility Index (NCI) to determine tracker quality independent of the data. This paper demonstrates the usefulness of relative metrics to determine a model mismatch, or more specifically a bias in the model, using the probabilistic data association filter, the unscented Kalman filter, and the particle filter.
机译:跟踪性能是数据质量,跟踪器类型和目标机动性的函数。许多当代追踪方法对于各种操作条件都很有用。要确定非线性跟踪性能,我们希望探索突出跟踪器功能的指标。利用新出现的相对轨道度量,与rool-yan-square error(rms)计算相反,我们探索平均归一化估计误差平方(aness)和非可信度指数(nci),以确定独立于数据的跟踪器质量。本文使用概率数据关联滤波器,未加注的卡尔曼滤波器和粒子滤波器来展示相对度量来确定模型不匹配,或者更具体地说是模型中的偏差的有用性。

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