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真实场景运动目标轨迹有效性判断与自动聚类算法研究
引用本文:潘奇明,程咏梅,杨涛,潘泉,赵春晖. 真实场景运动目标轨迹有效性判断与自动聚类算法研究[J]. 计算机应用研究, 2007, 24(4): 158-160,169
作者姓名:潘奇明  程咏梅  杨涛  潘泉  赵春晖
作者单位:西北工业大学,自动化学院,陕西,西安,710072;西北工业大学,自动化学院,陕西,西安,710072;西北工业大学,自动化学院,陕西,西安,710072;西北工业大学,自动化学院,陕西,西安,710072;西北工业大学,自动化学院,陕西,西安,710072
基金项目:国家自然科学基金 , 陕西省科技攻关项目
摘    要:提出了真实场景中的运动目标轨迹有效性判断与自动聚类方法.利用轨迹长度、坐标值方差及目标相邻两帧运动方向等信息,对轨迹进行了预处理,得到有效的轨迹,然后以其作为样本,计算轨迹之间的空间相似距离,采用K均值聚类法,按轨迹的几何形状完成了轨迹聚类.提出了利用目标运动的起始点及整个运动过程中目标的运动方向信息,采用K均值聚类方法,进一步按目标的运动方向完成了轨迹聚类.两种真实场景的目标轨迹聚类结果证明了该方法的有效性.其研究结果为学习轨迹模式、目标运动轨迹识别、分类、异常检测奠定了基础.

关 键 词:轨迹聚类  K 均值  轨迹识别  分类  异常检测
文章编号:1001-3695(2007)04-0158-03
修稿时间:2005-12-062006-04-05

Automatic Validating and Clustering Method for Trajectories of Moving Objects in Real Scene
PAN Qi-ming,CHENG Yong-mei,YANG Tao,PAN Quan,ZHAO Chun-hui. Automatic Validating and Clustering Method for Trajectories of Moving Objects in Real Scene[J]. Application Research of Computers, 2007, 24(4): 158-160,169
Authors:PAN Qi-ming  CHENG Yong-mei  YANG Tao  PAN Quan  ZHAO Chun-hui
Abstract:A novel method that can accurately validate and cluster trajectories of the moving objects in real scenes was presented.Firstly,through calculating the length,variance of the coordinates and orientation code of the trajectories,valid trajectories were retained.And then the valid ones were taken as the samples and automatically clustered based on K-means approach using the distance between two trajectories.Moreover,a new method to further cluster the trajectories using the start points of them and the information of orientation during the whole process was presented.The trajectories are effectively clustered in two real scenes.Results can provide efficient evidence for the latter work such as trajectory recognition,classification,and anomaly detection.
Keywords:trajectory clustering  K-means(KM)  trajectory recognition  classification  anomaly detection
本文献已被 CNKI 维普 万方数据 等数据库收录!
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