Publication | Closed Access
Personalized mobile physical activity recognition
52
Citations
13
References
2013
Year
Unknown Venue
Physical ActivityEngineeringMachine LearningActivity RecognitionWearable TechnologyIntelligent SystemsUnknown SubjectData ScienceData MiningPattern RecognitionHealth SciencesUser Behavior ModelingPhysical FitnessPredictive AnalyticsKnowledge DiscoveryIntelligent ClassificationMobile ComputingComputer ScienceData ClassificationMobile SensingChildhood Physical ActivityHuman MovementMobile HealthDecision Trees
Personalization of activity recognition has become a topic of interest recently. This paper presents a novel concept, using a set of classifiers as general model, and retraining only the weight of the classifiers with new labeled data from a previously unknown subject. Experiments with different methods based on this concept show that it is a valid approach for personalization. An important benefit of the proposed concept is its low computational cost compared to other approaches, making it also feasible for mobile applications. Moreover, more advanced classifiers (e.g. boosted decision trees) can be combined with the new concept, to achieve good performance even on complex classification tasks. Finally, a new algorithm is introduced based on the proposed concept, which outperforms existing methods, thus further increasing the performance of personalized applications.
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