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基于加权极限学习机的异常轨迹检测算法
引用本文:李威龙,范新南,李 敏,郑併斌.基于加权极限学习机的异常轨迹检测算法[J].微处理机,2014(1):76-79,84.
作者姓名:李威龙  范新南  李 敏  郑併斌
作者单位:[1]河海大学物联网工程学院,常州213022 [2]江苏省输配电重点实验室,常州213022
摘    要:针对现有异常轨迹检测中分类不平衡造成难以确定最优分类面的问题,提出一种基于加权极限学习机(ELM,Extreme Learning Machine)的异常轨迹检测算法。该算法采用加权ELM克服轨迹数据不平衡造成的分类面偏移,通过对正、负两类样本合理分配权重,并构造最优分类面获得较好的异常检测效果。仿真实验表明,加权ELM算法在训练速度,准确率,整体性能等方面均优干传统SVM和BP网络分类方法。

关 键 词:异常检测  迹轨分析  极限学习机

Trajectory Outliers Detection Algorithm Based on Weighted ELM
Affiliation:LI Wei- long ,FAN Xin- nan ,LI Min,ZHENG Bing- bin( 1. College of lnternet of Things Engineering, Hohai University, Changzhou 213022, China; 2. Jiangsu Key Laboratory for Power Transmission and Distribution, Changzhou 213022, China )
Abstract:It is difficuh to find the optimal separating hyperplane caused by imbMance classification of the existing trajectory outlier detection algorithm, this paper proposes an algorithm to detect trajectory outliers by means of weighted extreme learning machine (ELM). This algorithm adopts the Weighted ELM to overcome the offset of separating hyperplane. Firstly, proper weight is set for positive and negative samples adaptively, and then the optimal separating hyperplane is constructed to get better effect for abnormal detection. The results of simulation experiments show that, in training speed, accuracy and overall performance, the weighted ELM algorithm is better than the traditional SVM and BP network classification method.
Keywords:Outliers detection  Trajectory analysis  Extreme Learning Machine
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