Semantic novelty detection aims at discovering unknown categories in the test data. This task is particularly relevant in safety-critical applications, such as autonomous driving or healthcare, where it is crucial to recognize unknown objects at deployment time and issue a warning to the user accordingly. Despite the impressive advancements of deep learning research, existing models still need a finetuning stage on the known categories in order to recognize the unknown ones. This could be prohibitive when privacy rules limit data access, or in case of strict memory and computational constraints (e.g. edge computing). We claim that a tailored representation learning strategy may be the right solution for effective and efficient semantic novelty detection. Besides extensively testing state-of-the-art approaches for this task, we propose a novel representation learning paradigm based on relational reasoning. It focuses on learning how to measure semantic similarity rather than recognizing known categories. Our experiments show that this knowledge is directly transferable to a wide range of scenarios, and it can be exploited as a plug-and-play module to convert closed-set recognition models into reliable open-set ones.
翻译:语义新颖的检测旨在发现测试数据中的未知类别。 这项任务在安全关键应用中特别相关, 如自主驾驶或医疗保健, 在部署时识别未知对象并相应向用户发出警告至关重要。 尽管深层学习研究取得了令人印象深刻的进展, 现有模型仍然需要对已知类别进行微调阶段, 以识别未知类别。 当隐私规则限制数据存取, 或遇到严格的记忆和计算限制( 如边缘计算) 时, 这可能令人望而却步。 我们声称, 量身定制的代言学习战略可能是高效和高效的语义新颖检测的正确解决方案。 除了广泛测试此任务的最新方法外, 我们提议基于关联推理的新型代言学习模式。 它侧重于学习如何测量语义相似性, 而不是识别已知类别。 我们的实验显示, 这种知识可以直接转换到广泛的情景, 并且可以作为一种插插和游戏模块, 将封闭式识别模式转换成可靠的开放模式。