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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Efficient gating in data association with multivariate Gaussian distributed states
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Efficient gating in data association with multivariate Gaussian distributed states

机译:与多元高斯分布状态的数据关联中的有效门控

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An efficient algorithm for evaluating the (weighted bipartite graph of) associations between two sets of data with Gaussian error, e.g., between a set of measured state vectors and a set of estimated state vectors, is described. A general method is developed for determining, from the covariance matrix, minimal d-dimensional error ellipsoids for the state vectors which always overlap when a gating criterion is satisfied. Circumscribing boxes, or d-ranges, for the data ellipsoids are then found and whenever they overlap the association probability is computed. For efficiently determining the intersections of the d-ranges, a multidimensional search tree method is used to reduce the overall scaling of the evaluation of associations. Very few associations that lie outside the predetermined error threshold or gate are evaluated. The search method developed is a fixed Mahalanobis distance search. Empirical tests for variously distributed data in both three and eight dimensions indicate that the scaling is significantly reduced. Computational loads for many large-scale data association tasks can therefore be significantly reduced by this or related methods.
机译:描述了一种有效算法,该算法用于评估两组数据之间的(加权二部图)具有高斯误差,例如,在一组测量的状态向量与一组估计的状态向量之间的关联。开发了一种用于从协方差矩阵确定状态向量的最小d维误差椭球的通用方法,当满足门控标准时,该椭球总是重叠。然后找到数据椭球的外接盒或d范围,并在它们重叠时计算关联概率。为了有效地确定d范围的交集,使用了多维搜索树方法来减少关联评估的整体比例。很少评估超出预定错误阈值或门的关联。开发的搜索方法是固定的Mahalanobis距离搜索。在三个维度和八个维度上对各种分布的数据进行的经验测试表明,缩放比例显着降低。因此,通过这种方法或相关方法,可以大大减少许多大规模数据关联任务的计算负荷。

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