人工智能
计算机科学
开放集
嵌入
机器学习
水准点(测量)
弹丸
贝叶斯概率
度量(数据仓库)
班级(哲学)
先验概率
参数统计
数据挖掘
数学
化学
统计
大地测量学
有机化学
离散数学
地理
作者
John Willes,J. Michael Harrison,Ali Harakeh,Chelsea Finn,Marco Pavone,Steven L. Waslander
标识
DOI:10.1109/tpami.2022.3201541
摘要
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.
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