Title of article
Extending knowledge-driven activity models through data-driven learning techniques
Author/Authors
Azkune، نويسنده , , Gorka and Almeida، نويسنده , , Aitor and Lَpez-de-Ipiٌa، نويسنده , , Diego and Chen، نويسنده , , Liming، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2015
Pages
14
From page
3115
To page
3128
Abstract
Knowledge-driven activity recognition is an emerging and promising research area which has already shown very interesting features and advantages. However, there are also some drawbacks, such as the usage of generic and static activity models. This paper presents an approach to using data-driven techniques to evolve knowledge-driven activity models with a user’s behavioral data. The approach includes a novel clustering process where initial incomplete models developed through knowledge engineering are used to detect action clusters which represent activities and aggregate new actions. Based on those action clusters, a learning process is then designed to learn and model varying ways of performing activities in order to acquire complete and specialized activity models. The approach has been tested with real users’ inputs, noisy sensors and demanding activity sequences. Initial results have shown that complete and specialized activity models are properly learned with success rates of 100% at the expense of learning some false positive models.
Keywords
Knowledge-driven , activity model , activity recognition , Learning
Journal title
Expert Systems with Applications
Serial Year
2015
Journal title
Expert Systems with Applications
Record number
2355751
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