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首页> 外文期刊>IEE Proceedings. Part f, Radar, sonar and navigation >Spatial distribution model for tracking extended objects
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Spatial distribution model for tracking extended objects

机译:用于跟踪扩展对象的空间分布模型

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摘要

A Bayesian filter has been developed for tracking an extended object in clutter based on two simple axioms: (i) the numbers of received target and clutter measurements in a frame are Poisson distributed (so several measurements may originate from the target) and (ii) target extent is modelled by a spatial probability distribution and each target-related measurement is an independent 'random draw' from this spatial distribution (convolved with a sensor model). Diffuse spatial models of target extent are of particular interest. This model is especially suitable for a particle filter implementation, and examples are presented for a Gaussian mixture model and for a uniform stick target convolved with a Gaussian error. A rather restrictive special case that admits a solution in the form of a multiple hypothesis Kalman filter is also discussed and demonstrated.
机译:已经开发出一种贝叶斯滤波器,用于基于两个简单的公理来跟踪杂波中的扩展对象:(i)帧中接收到的目标和杂波测量的数量是泊松分布的(因此一些测量可能源自目标)和(ii)目标范围是通过空间概率分布建模的,每个与目标相关的度量都是根据该空间分布(与传感器模型进行卷积)的独立“随机抽取”。目标范围的漫射空间模型特别受关注。该模型特别适合于粒子过滤器的实现,并给出了高斯混合模型和卷积有高斯误差的均匀棒状目标的示例。还讨论并证明了一个相当局限性的特例,该特例以多重假设卡尔曼滤波器的形式接受了一个解决方案。

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