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An Improved Tobit Kalman Filter with Adaptive Censoring Limits

机译:一种改进的Tober Kalman滤波器,具有自适应审查限制

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This paper deals with the Tobit Kalman filtering (TKF) process when the measurements are correlated and censored. The case of interval censoring, i.e., the case of measurements which belong to some interval with given censoring limits, is considered. Two improvements of the standard TKF process are proposed, in order to estimate the hidden state vectors. Firstly, the exact covariance matrix of the censored measurements is calculated by taking into account the censoring limits. Secondly, the probability of a latent (normally distributed) measurement to belong in or out of the uncensored region is calculated by taking into account the Kalman filter residual. The designed algorithm is tested using both synthetic and real data sets. The real data set includes human skeleton joints' coordinates captured by the Microsoft Kinect II sensor. In order to cope with certain real-life situations that cause problems in human skeleton tracking, such as (self)-occlusions, closely interacting persons, etc., adaptive censoring limits are used in the proposed TKF process. Experiments show that the proposed method outperforms other filtering processes in minimizing the overall root-mean-square error for synthetic and real data sets.
机译:本文处理Tober Kalman滤波(TKF)过程,当测量相关并进行审查时。考虑了间隔审查的情况,即属于具有给定审查限制的某些间隔的测量的情况。提出了标准TKF过程的两种改进,以估计隐藏的状态向量。首先,通过考虑审查限制来计算被缩醛测量的精确协方差矩阵。其次,通过考虑Kalman滤波器残差来计算潜伏(通常分布)测量的概率(常规分布)测量的概率。使用合成和真实数据集测试设计的算法。实际数据集包括由Microsoft Kinect II传感器捕获的人骨架关节坐标。为了应对某些现实生活中,导致人类骨架跟踪中的问题,例如(自我) - 单轴,紧密相互作用等,在所提出的TKF过程中使用适应性循环限制。实验表明,所提出的方法在最小化合成和真实数据集的整体根均方误差最小化时优于其他过滤过程。

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