基于相似度分析的轨迹异常检测

Gerardo Torres, Germain Garcia Zanabria, H. V. Olivera, Lauro Enciso-Rodas
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引用次数: 2

摘要

自动轨迹处理具有多种应用,主要是由于数据的广泛可用性。轨迹数据具有重要的实用价值,可以对监视和跟踪设备等各种问题进行建模,检测异常轨迹,识别非法和不利活动。在本研究中,我们对两种描述符检测异常轨迹的性能进行了比较分析。我们将小波变换和傅立叶变换定义为轨迹描述符,以生成特征并随后检测异常。实验强调在系数特征空间的描述性能。为此,我们使用无监督学习,特别是聚类技术,来生成子集并识别哪些是不规则的。该研究的意义表明,在轨迹中使用描述符进行自动异常检测和使用无监督学习方法自动分割所需信息是可能的。我们的研究的性能和比较分析是通过实验和一个案例研究来证明的,考虑了合成和真实的数据集,留下了我们贡献的证据。
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Trajectory Anomaly Detection based on Similarity Analysis
Automatic trajectory processing has multiple applications, mainly due to the wide availability of the data. Trajectory data have a significant practical value, making possible the modeling of various problems such as surveillance and tracking devices, detect anomaly trajectories, identifying illegal and adverse activity. In this study, we show a comparative analysis of the performance of two descriptors to detect anomaly trajectories. We define Wavelet and Fourier transforms as trajectory descriptors to generate characteristics and subsequently detect anomalies. The experiments emphasize performance in the description in the coefficient feature space. For that, we used unsupervised learning, specifically clustering techniques, to generate subsets and identify which are irregular. The implications of the study demonstrate that it is possible to use descriptors in trajectories for automatic anomaly detection and the use of unsupervised learning methods that automatically segment the required information. The performance and comparative analysis of our study are demonstrated through experiments and a case study considering synthetic and real data sets that leave evidence of our contribution.
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