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Evaluation and comparison of anomaly detection algorithms in annotated datasets from the maritime domain

机译:海域带注释数据集中异常检测算法的评估和比较

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Anomaly detection supports human decision makers in their surveillance tasks to ensure security. To gain the trust of the operator, it is important to develop a robust system, which gives the operator enough insight to take a rational choice about future steps. In this work, the maritime domain is investigated. Here, anomalies occur in trajectory data. Hence, a normal model for the trajectories has to be estimated. Despite the goal of anomaly detection in real life operations, until today, mostly simulated anomalies have been evaluated to measure the performance of different algorithms. Therefore, an annotation tool is developed to provide a ground truth on a non-simulative dataset. The annotated data is used to compare different algorithms with each other. For the given dataset, first experiments are conducted with the Gaussian Mixture Model (GMM) and the Kernel Density Estimator (KDE). For the evaluation of the algorithms, precision, recall, and f1-score are compared.
机译:异常检测为人类决策者的监视任务提供支持,以确保安全性。为了获得操作员的信任,重要的是开发一个强大的系统,该系统可以为操作员提供足够的洞察力,以对未来的步骤做出合理的选择。在这项工作中,对海域进行了研究。在此,轨迹数据中出现异常。因此,必须估计轨迹的正常模型。尽管现实生活中的异常检测的目标是,但直到今天,仍对大多数模拟异常进行了评估,以衡量不同算法的性能。因此,开发了注释工具以在非模拟数据集上提供基本事实。带注释的数据用于相互比较不同的算法。对于给定的数据集,首先使用高斯混合模型(GMM)和核密度估计器(KDE)进行了实验。为了评估算法,比较了精度,召回率和f1得分。

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