From a safety perspective, a machine learning method embedded in real-world applications is required to distinguish irregular situations. For this reason, there has been a growing interest in the anomaly detection (AD) task. Since we cannot observe abnormal samples for most of the cases, recent AD methods attempt to formulate it as a task of classifying whether the sample is normal or not. However, they potentially fail when the given normal samples are inherited from diverse semantic labels. To tackle this problem, we introduce a latent class-condition-based AD scenario. In addition, we propose a confidence-based self-labeling AD framework tailored to our proposed scenario. Since our method leverages the hidden class information, it successfully avoids generating the undesirable loose decision region that one-class methods suffer. Our proposed framework outperforms the recent one-class AD methods in the latent multi-class scenarios.
翻译:从安全角度看,需要一种嵌入现实世界应用中的机器学习方法来区分不正常情况。 因此,人们对异常检测(AD)任务的兴趣日益浓厚。由于我们无法观察大多数案例的异常样本,最近的AD方法试图将它设计成对样本是否正常进行分类的任务。然而,当给定的正常样本从不同的语义标签中继承时,它们可能会失败。为了解决这一问题,我们引入了一种基于潜伏等级条件的AD假想。此外,我们建议了一种适合我们拟议情景的基于信任的自我标签AD框架。由于我们的方法利用了隐藏的类信息,它成功地避免了产生一等方法受损的不可取的松动决策区域。我们提议的框架在潜在的多级假想中超越了最近的单级AD方法。