CoreTracking:一种有效的移动目标聚类和跟踪聚类的方法

Daoying Ma, A. Zhang
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引用次数: 3

摘要

在广阔的战场上探测大群目标的活动和预测其趋势是制定合理的军事决策的关键投入。现代机载雷达传感器可以提供战场地面活动的广域监视覆盖。当被地形或其他因素遮挡时,一些物体可能只能隔一段时间才能被探测到,从而产生间歇性的雷达数据,给长期跟踪群体带来困难。我们提出了一种称为CoreTracking的算法,该算法动态地将单个目标分组到集群中,并随时间跟踪集群。大多数传统的集群技术都是静态面向对象的。我们提出了一个“核心成员”的概念来支持动态的面向对象集群,并减轻数据间歇的影响。通过观察核心集群成员的运动,我们可以跨帧跟踪集群并预测它们未来的运动。最后给出了CoreTracking算法在CASTFOREM数据集上的性能和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CoreTracking: an efficient approach to clustering moving targets and tracking clusters
Detecting the activities and predicting the tendencies of large groups of targets in wide battlefields are critical inputs to formulating sound military decisions. Modern airborne radar sensors can provide wide-area surveillance coverage of battlefield ground activities. When obscured by terrain or other factors, some objects may only be detectable at intervals, generating intermittent radar data and creating difficulties for tracking groups over time. We present an algorithm, termed CoreTracking, which dynamically groups individual targets into clusters and tracks the clusters over time. Most traditional clustering techniques are static-object-oriented. We propose a "core member" concept to support dynamic-object-oriented clustering and to mitigate the effects of data intermittence. Observing the movement of the core cluster members, we can track the clusters across frames and predict their future movements. The performance and results of applying the CoreTracking algorithm to CASTFOREM data sets is also presented.
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