Rushe, EllenEllenRusheMacNamee, BrianBrianMacNamee2024-02-092024-02-092020-12-12http://hdl.handle.net/10197/25419The 2020 Thirty-fourth Annual Conference on Neural Information Processing Systems (NeurIPS 2020), Virtual Conference, 6-12 December 2020A common assumption of novelty detection is that the distribution of both “normal" and “novel" data are static. This, however, is often not the case—for example scenarios where data evolves over time or where the definition of normal and novel depends on contextual information both lead to changes in these distributions. This can lead to significant difficulties when attempting to train a model on datasets where the distribution of normal data in one scenario is similar to that of novel data in another scenario. In this paper we propose a context-aware approach to novelty detection for deep autoencoders to address these difficulties. We create a semisupervised network architecture that utilises auxiliary labels to reveal contextual information and allow the model to adapt to a variety of contexts in which the definitions of normal and novel change. We evaluate our approach on both image data and real world audio data displaying these characteristics and show that the performance of individually trained models can be achieved in a single model.enDeep learningNovelty detectionContext awarenessDeep Context-Aware Novelty DetectionConference Publication2021-01-2415/CDA/352012/RC/2289_Phttps://creativecommons.org/licenses/by-nc-nd/3.0/ie/