In many object recognition applications, the set of possible categories is an open set, and the deployed recognition system will encounter novel objects belonging to categories unseen during training. Detecting such "novel category" objects is usually formulated as an anomaly detection problem. Anomaly detection algorithms for feature-vector data identify anomalies as outliers, but outlier detection has not worked well in deep learning. Instead, methods based on the computed logits of visual object classifiers give state-of-the-art performance. This paper proposes the Familiarity Hypothesis that these methods succeed because they are detecting the absence of familiar learned features rather than the presence of novelty. The paper reviews evidence from the literature and presents additional evidence from our own experiments that provide strong support for this hypothesis. The paper concludes with a discussion of whether familiarity detection is an inevitable consequence of representation learning.
翻译:在许多目标识别应用中,一套可能的类别是开放式的,而部署的识别系统将遇到属于培训期间看不见的类别的新物品。检测这类“新分类”对象通常被设计成异常现象检测问题。特性矢量数据的异常检测算法发现异常现象是外向值,但外向值检测在深层学习中效果不佳。相反,根据视觉物体分类器的计算日志计算的方法提供了最先进的性能。本文提出这些方法成功的理论,因为它们发现缺乏熟悉的学识特征,而不是新颖特征的存在。本文审查了文献中的证据,并从我们自己的实验中提出了更多证据,为这一假设提供了有力的支持。论文最后讨论了是否熟悉度检测是代表学习的必然结果。