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Fusion of Gaussian mixture models for possible mismatches of sensor model

机译:高斯混合模型的融合,以防止传感器模型不匹配

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摘要

This paper addresses estimation fusion in the presence of possible mismatches of sensor model. The main concerns of the paper lie in two aspects. One is to improve the filter performance of the single sensor when there are possible mismatches about the sensor model. The other one is to adopt a good fusion scheme to combine local estimates. For these purposes, the measurement process of the local sensor is modeled by multiple models firstly, and the IMM (interacting multiple model) estimator is implemented to produce estimates for individual models. Next, we describe the local estimate by a Gaussian mixture rather than a single Gaussian density in the baseline IMM filter. Such a GMM (Gaussian mixture model) representation of the system state allows us to keep the detailed information about the local tracker, which contributes to the further fusion if treated properly. Finally, the fusion of two Gaussian mixtures is done in the probabilistic framework, and a close-form solution is derived without complex numerical operations. Simulation results demonstrate the effectiveness of the proposed approach.
机译:本文探讨了传感器模型可能不匹配时的估计融合。本文的主要关注点在于两个方面。一种是在传感器模型可能不匹配时提高单个传感器的滤波器性能。另一种是采用良好的融合方案来合并局部估计。为此,首先通过多个模型对本地传感器的测量过程进行建模,然后实施IMM(交互多模型)估计器以生成各个模型的估计。接下来,我们在基线IMM滤波器中通过高斯混合而不是单个高斯密度描述局部估计。系统状态的这种GMM(高斯混合模型)表示形式使我们能够保留有关本地跟踪器的详细信息,如果处理得当,则有助于进一步融合。最后,在概率框架中完成了两种高斯混合的融合,并且无需复杂的数值运算就可以得出一个封闭形式的解。仿真结果证明了该方法的有效性。

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