One-class anomaly detection is challenging. A representation that clearly distinguishes anomalies from normal data is ideal, but arriving at this representation is difficult since only normal data is available at training time. We examine the performance of representations, transferred from auxiliary tasks, for anomaly detection. Our results suggest that the choice of representation is more important than the anomaly detector used with these representations, although knowledge distillation can work better than using the representations directly. In addition, separability between anomalies and normal data is important but not the sole factor for a good representation, as anomaly detection performance is also correlated with more adversarially brittle features in the representation space. Finally, we show our configuration can detect 96.4% of anomalies in a genuine X-ray security dataset, outperforming previous results.
翻译:单级异常现象的检测是挑战性的。 将异常现象与正常数据明显区分开来的说法是理想的,但得出这一表述是困难的,因为培训时间只有正常的数据。 我们检查了从辅助任务转来的演示表现的性能,以探测异常现象。 我们的结果表明,选择代表情况比这些演示中所用的异常现象检测器更重要,尽管知识蒸馏比直接使用描述效果更好。 此外,异常现象与正常数据之间的分离很重要,但不是良好代表性的唯一因素,因为异常现象检测性表现也与代表性空间中对抗性较弱的特点相关。 最后,我们表明,我们的配置可以检测出真正的X射线安全数据集中的96.4%的异常现象,其表现优于以往的结果。