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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Sequential Dynamic Leadership Inference Using Bayesian Monte Carlo Methods
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Sequential Dynamic Leadership Inference Using Bayesian Monte Carlo Methods

机译:使用贝叶斯蒙特卡罗方法的顺序动态领导推断

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Hierarchy and leadership interactions commonly occur in animal groups, crowds of people, and in vehicle motions. Such interactions are often affected by one or more individuals who possess key domain information (e.g., final destination, environmental constraints, and best routes) or pertinent traits (e.g., better navigation, sensing, and decision making capabilities) compared with the rest of the group. This article presents a framework for the automatic identification of group structure and leadership from noisy sensory observations of tracked groups. Accordingly, a new leader-follower model is developed, which assumes the dynamics of the group to be a multivariate Ornstein-Uhlenbeck process with the designated leader(s) drifting to the destination and followers reverting to the leaders' state. Sequential Monte Carlo approaches, and specifically the sequential Markov chain Monte Carlo approach, are adopted to infer, probabilistically, the evolving leadership structure. A Rao-Blackwellisation scheme is employed such that the kinematic state of the objects in the group is inferred in closed form by Kalman filtering. Experiments show that the proposed techniques can successfully determine the leadership structures in challenging scenarios with a corresponding enhancement in tracking accuracy through direct consideration of the leadership interactions of the group.
机译:在动物群体,人群和车辆运动中常见的等级和领导互动。这种互动通常受到一个或多个人的影响,他们拥有关键域信息(例如,最终目的地,环境限制以及最佳路线)或相关性的特征(例如,更好的导航,传感和决策能力)与其余部分相比团体。本文提出了一种框架,用于自动识别追踪群体的嘈杂感官观测的组结构和领导。因此,开发了一种新的领导者 - 跟随器模型,该模型假设该组的动态是具有与指定的领导者漂移到目的地的指定领导者和追随者恢复领导者状态的多元奥恩斯坦-Uhlenbeck过程。序贯蒙特卡罗方法,特别是序贯马尔可夫链Monte Carlo方法推断,概率,演化的领导结构。采用RAO-BlackWellisation方案,使得通过卡尔曼滤波以封闭形式推断本集团中物体的运动状态。实验表明,通过直接考虑本集团的领导互动,所提出的技术可以成功地确定具有挑战性的情景中的领导结构,以跟踪准确性相应的增强。

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