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首页> 外文期刊>Journal of mathematical modelling and algorithms in operations research >A Particle Filtering Approach for Tracking an Unknown Number of Objects with Dynamic Relations
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A Particle Filtering Approach for Tracking an Unknown Number of Objects with Dynamic Relations

机译:一种跟踪具有动态关系的未知数量对象的粒子滤波方法

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摘要

In recent years there has been a growing interest on particle filters for solving tracking problems, thanks to their applicability to problems with continuous, nonlinear and non-Gaussian state spaces, which makes them more suited than hidden Markov models, Kalman filters and their derivations, in many real world tasks. Applications include video surveillance, sensor fusion, tracking positions and behaviors of moving objects, situation assessment in civil and bellic scenarios, econometric and clinical data series analysis. In many environments it is possible to recognize classes of similar entities, like pedestrians or vehicles in a video surveillance system, or commodities in econometric. In this paper, a relational particle filter for tracking an unknown number of objects is presented which exploits possible interactions between objects to improve the quality of filtering. We will see that taking into account relations between objects will ease the tracking of objects in presence of occlusions and discontinuities in object dynamics. Experimental results on a benchmark data set are presented.
机译:近年来,由于粒子滤波器适用于具有连续,非线性和非高斯状态空间的问题,因此对于求解跟踪问题的兴趣日益浓厚,这使其比隐马尔可夫模型,卡尔曼滤波器及其推导更适用,在许多现实世界中的任务中。应用包括视频监视,传感器融合,跟踪运动对象的位置和行为,民用和好战情况下的情况评估,计量经济和临床数据系列分析。在许多环境中,可以识别相似实体的类别,例如视频监视系统中的行人或车辆,或计量经济学中的商品。在本文中,提出了一种用于跟踪未知数量对象的关系粒子过滤器,它利用对象之间的可能相互作用来提高过滤质量。我们将看到考虑到对象之间的关系将简化在对象动力学存在遮挡和不连续的情况下对对象的跟踪。给出了基准数据集上的实验结果。

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