摘要: 针对在多帧数据条件下的目标分群问题,提出一种基于数据流聚类的动态目标分群算法TG-Stream,该算法由在线和离线2个部分组成。在线部分采用临时存储结构(TSS)和金字塔时间框架保存侦察数据集的概要信息,离线部分采用CNM算法对时间框架的信息进行聚类,最终得到分群的结果。实验结果表明,TG-Stream具有灵活的精度和效率平衡性,能较好地满足决策辅助系统处理实时信息的需要。
关键词:
目标分群,
多帧数据,
数据流聚类,
态势估计
Abstract: In order to solve the target grouping below multi-frame data, this paper introduces a new grouping algorithm, TG-Stream, which can be divided into two parts: on-line part and off-line part. In on-line part, it uses the concepts of a pyramidal time frame and a Temporary Storage Structure(TSS) to save summary information of sensor data. In off-line part, it uses CNM algorithm to cluster the suitable data and output the grouping result. Experimental results show that TG-Stream algorithm has good equilibrium between accuracy and efficiency.
Key words:
target grouping,
multi-frame data,
data stream clustering,
situation assessment
中图分类号:
龙真真;张 策;吴伟胜;刘飞裔. 基于多帧数据的目标分群算法[J]. 计算机工程, 2009, 35(23): 168-171.
LONG Zhen-zhen; ; ZHANG Ce; WU Wei-sheng; LIU Fei-yi. Target Grouping Algorithm Based on Multi-frame Data[J]. Computer Engineering, 2009, 35(23): 168-171.