Personalized mobile physical activity recognition

Attila Reiss, D. Stricker
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引用次数: 50

Abstract

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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个性化移动身体活动识别
活动识别的个性化是近年来人们关注的一个话题。本文提出了一个新颖的概念,使用一组分类器作为一般模型,并且仅使用来自未知主题的新标记数据重新训练分类器的权值。基于这一概念的不同方法的实验表明,它是一种有效的个性化方法。与其他方法相比,所提出的概念的一个重要优点是其计算成本低,使其也适用于移动应用程序。此外,更高级的分类器(例如增强决策树)可以与新概念相结合,即使在复杂的分类任务上也能获得良好的性能。最后,在此基础上提出了一种优于现有方法的新算法,从而进一步提高了个性化应用的性能。
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The Semantic Web: 19th International Conference, ESWC 2022, Hersonissos, Crete, Greece, May 29 – June 2, 2022, Proceedings Correction to: A Semantic Framework to Support AI System Accountability and Audit The Semantic Web: 18th International Conference, ESWC 2021, Virtual Event, June 6–10, 2021, Proceedings QAnswer KG: Designing a Portable Question Answering System over RDF Data Incremental Multi-source Entity Resolution for Knowledge Graph Completion
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