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Dynamic Bayesian Approach for decision-making in Ego-Things

机译:自我事物中的动态贝叶斯决策方法

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This paper presents a novel approach to detect abnormalities in dynamic systems based on multisensory data and feature selection. The proposed method produces multiple inference models by considering several features of the observed data. This work facilitates the obtainment of the most precise features for predicting future instances and detecting abnormalities. Growing neural gas (GNG) is employed for clustering multisensory data into a set of nodes that provide a semantic interpretation of data and define local linear models for prediction purposes. Our method uses a Markov Jump particle filter (MJPF) for state estimation and abnormality detection. The proposed method can be used for selecting the optimal set features to be shared in networking operations such that state prediction, decision-making, and abnormality detection processes are favored. This work is evaluated by using a real dataset consisting of a moving vehicle performing some tasks in a controlled environment.
机译:本文提出了一种基于多传感器数据和特征选择的动态系统异常检测方法。所提出的方法通过考虑观测数据的几个特征来产生多个推理模型。这项工作有助于获得最精确的功能,以预测未来的情况并检测异常。越来越多的神经气体(GNG)用于将多感官数据聚集到一组节点中,这些节点提供数据的语义解释并定义局部线性模型以进行预测。我们的方法使用马尔可夫跳跃粒子滤波器(MJPF)进行状态估计和异常检测。所提出的方法可以用于选择将在网络操作中共享的最佳集合特征,从而有利于状态预测,决策和异常检测过程。这项工作是通过使用真实的数据集进行评估的,该数据集由在受控环境中执行某些任务的移动车辆组成。

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