发明名称 TAGGING OVER TIME: REAL-WORLD IMAGE ANNOTATION BY LIGHTWEIGHT METALEARNING
摘要 A principled, probabilistic approach to meta-learning acts as a go-between for a 'black-box' image annotation system and its users. Inspired by inductive transfer, the approach harnesses available information, including the black-box model's performance, the image representations, and a semantic lexicon ontology. Being computationally 'lightweight.' the meta-learner efficiently re-trains over time, to improve and/or adapt to changes. The black-box annotation model is not required to be re-trained, allowing computationally intensive algorithms to be used. Both batch and online annotation settings are accommodated. A "tagging over time" approach produces progressively better annotation, significantly outperforming the black-box as well as the static form of the meta-learner, on real-world data.
申请公布号 US2009083332(A1) 申请公布日期 2009.03.26
申请号 US20080234159 申请日期 2008.09.19
申请人 THE PENN STATE RESEARCH FOUNDATION 发明人 DATTA RITENDRA;JOSHI DHIRAJ;LI JIA;WANG JAMES Z.
分类号 G06F17/30 主分类号 G06F17/30
代理机构 代理人
主权项
地址