首页> 外文会议>International Workshop on Knowledge Discovery from Sensor Data >Incremental Anomaly Detection Approach for Characterizing Unusual Profiles
【24h】

Incremental Anomaly Detection Approach for Characterizing Unusual Profiles

机译:表征异常配置文件的增量异常检测方法

获取原文

摘要

The detection of unusual profiles or anomalous behavioral characteristics from sensor data is especially complicated in security applications where the threat indicators may or may not be known in advance. Predictive modeling of massive volumes of historical data can yield insights on usual or baseline profiles, which in turn can be utilized to isolate unusual profiles when new data are observed in real-time. Thus, an incremental anomaly detection approach is proposed. This is a two-stage approach in which the first stage processes the available historical data and develops statistics that are in turn used by the second stage in characterizing the new incoming data for real-time decisions. The first stage adopts a mixture model of probabilistic principal component analyzers to quantify each historical observation by probabilistic measures. The second stage is a chi-square based anomaly detection approach that utilizes the probabilistic measures obtained in the first stage to determine if the incoming data is an anomaly. The proposed anomaly detection approach performs satisfactorily on simulated and benchmark datasets. The approach is also illustrated in the context of detecting commercial trucks that may pose safety and security risk. It is able to consistently identified trucks with anomalous features in the scenarios investigated.
机译:从传感器数据检测来自传感器数据的异常谱或异常行为特征在威胁指标可能或可能无法提前知道的安全应用中特别复杂。大规模历史数据的预测建模可以产生对通常或基线概况的洞察,这又可以用来在实时观察新数据时隔离异常简档。因此,提出了增量异常检测方法。这是一种两级方法,其中第一阶段处理可用的历史数据,并开发第二阶段的统计数据,在表征用于实时决策的新传入数据时。第一阶段采用概率主成分分析仪的混合模型,以通过概率措施量化每个历史观察。第二阶段是基于Chi-Square的异常检测方法,其利用第一阶段中获得的概率测量来确定输入数据是否是异常。提出的异常检测方法令人满意地对模拟和基准数据集进行令人满意。还在检测可能构成安全性和安全风险的商业卡车的背景下说明该方法。它能够在调查的情景中一致地识别出具有异常特征的卡车。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号