We propose FlowSVDD -- a flow-based one-class classifier for anomaly/outliers detection that realizes a well-known SVDD principle using deep learning tools. Contrary to other approaches to deep SVDD, the proposed model is instantiated using flow-based models, which naturally prevents from collapsing of bounding hypersphere into a single point. Experiments show that FlowSVDD achieves comparable results to the current state-of-the-art methods and significantly outperforms related deep SVDD methods on benchmark datasets.
翻译:我们建议使用流动SVDD -- -- 一种流基单级的异常/异常检测分类器,它利用深层学习工具实现众所周知的 SVDD原则。 与其他深层SVDD方法相反,拟议模型采用流动模型即时化,这自然防止了将超视距捆绑成一个单一点。 实验显示,流动SVDDD取得了与当前最新方法相近的结果,大大优于基准数据集的相关深层SVDD方法。