As autonomous decision-making agents move from narrow operating environments to unstructured worlds, learning systems must move from a closed-world formulation to an open-world and few-shot setting in which agents continuously learn new classes from small amounts of information. This stands in stark contrast to modern machine learning systems that are typically designed with a known set of classes and a large number of examples for each class. In this work we extend embedding-based few-shot learning algorithms to the open-world recognition setting. We combine Bayesian non-parametric class priors with an embedding-based pre-training scheme to yield a highly flexible framework which we refer to as few-shot learning for open world recognition (FLOWR). We benchmark our framework on open-world extensions of the common MiniImageNet and TieredImageNet few-shot learning datasets. Our results show, compared to prior methods, strong classification accuracy performance and up to a 12% improvement in H-measure (a measure of novel class detection) from our non-parametric open-world few-shot learning scheme.
翻译:随着自主决策代理人从狭窄的操作环境向非结构化世界转移,学习系统必须从封闭世界的编制方式向开放世界和少镜头的设置方式转变,让代理人不断从少量信息中学习新班级。这与现代机器学习系统形成鲜明对比,现代机器学习系统通常设计时有一套已知的班级和每个班级的大量实例。在这项工作中,我们把基于几张短镜头的嵌入式学习算法推广到开放世界的识别设置。我们把巴耶斯的非参数级前科与基于嵌入的训练前计划结合起来,形成一个非常灵活的框架,我们称之为用于开放世界的少镜头学习(FLOWR) 。我们把我们的框架以通用MiniImaageNet和TieredImageNet的开放世界扩展框架作为基准,我们的成果显示,与以往的方法相比,高度的分类准确性表现以及从我们非对称开放世界的少数镜头学习计划(一种新型级检测)的H计量方法提高到12%。