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Anomaly Detection with Pattern of Life Extraction for GMTI Tracking

机译:对GMTI跟踪的寿命提取模式的异常检测

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Ground Moving Target Indicator (GMTI) uses the concept of airborne surveillance of moving ground objects to observe and take actions if necessary. With the improvement of surveillance technology, tracking individual target from the surveillance became possible, which allows the extraction of useful features for advance usage. Such features, known as tracks, are the results of GMTI tracking. The system for this paper will be based on GMTI track data. Though the quality of the tracker plays a crucial role to the system performance of this paper, the development of the tracker will not be discuss in this paper. The system will use simulated ideal GMTI tracks as inputs. This paper presents Pattern of Life (PoL) extraction and Anomaly Detection System (ADS). The results from PoL extraction will be used to improve the performance of ADS. The proposing ADS is a semi-supervised learning detection system, in which the system takes prior information to support and improve detection performance, but will still operate without prior information. The results from ADS will also be evaluated. The ADS will use a combination of various anomaly detection algorithms for different anomaly events including statistical approach using Gaussian Mixture Model Expectation Maximization (GMM-EM), Hidden Markov Model (HMM), graphical approach using Weiler-Atherton Polygon Clipping (WAPC) and various clustering algorithms such as K-mean clustering, Spectral clustering and DBSCAN.
机译:地面移动目标指示(GMTI)使用移动地面目标,观察,必要时采取行动的机载监视的概念。随着改进监控技术,从监视跟踪单个目标成为可能,它允许有用的功能使用预先提取。这样的特征,被称为磁道,是GMTI跟踪的结果。对于本文中的系统将基于GMTI跟踪数据。虽然跟踪器的质量起着本文的系统性能至关重要的作用,跟踪器的发展将不会在本文中讨论。该系统将使用模拟的理想GMTI轨道作为输入。本文展现生活(POL)的提取和异常检测系统(ADS)的模式。从POL提取物的结果将被用来提高广告的效果。该提出的ADS是一个半监督学习检测系统,其中,所述系统需要的先验信息以支持和提高检测性能,但仍然会没有事先的信息进行操作。从ADS的结果也将进行评估。在ADS将使用的不同的异常事件,包括使用高斯混合模型期望最大化(GMM-EM),隐​​马尔可夫模型(HMM),使用维勒-阿瑟顿多边形裁剪(WAPC)和各种图形的方法的统计方法的各种异常检测算法的组合聚类算法如K均值聚类,谱聚类和DBSCAN。

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