Relational Transformation-based Tagging for Human Activity Recognition

author: Niels Landwehr, University of Freiburg
published: Jan. 29, 2008,   recorded: September 2007,   views: 3425

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Description

The ability to recognize human activities from sensory information is essential for developing the next generation of smart devices. Many human activity recognition tasks are from a machine learning perspective quite similar to tagging tasks in natural language processing. Motivated by this similarity, we develop a relational transformation-based tagging system based on inductive logic programming principles, which is able to cope with expressive relational representations as well as a background theory. The approach is experimentally evaluated on two activity recognition tasks and compared to Hidden Markov Models, one of the most popular and successful approaches for tagging.

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