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Training a classifier for activity recognition using body motion simulation

机译:使用Body Motion Simulation培训用于活动识别的分类器

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摘要

Classification of human activity is an increasingly popular topic, as it is employed in various fields from fitness to remote health monitoring. Current automated approaches based on wearable sensors typically use supervised learning methodologies, where a classifier is trained with experimental data. This paper proposes the use of body motion and sensor simulation for building, or extending, the training databases and improve the classifier accuracy, without requiring further experimental campaigns.
机译:人类活动的分类是一种越来越受欢迎的话题,因为它在从健身到远程健康监测的各种领域中使用。基于可穿戴传感器的当前自动化方法通常使用受监督的学习方法,其中分类器具有实验数据。本文提出了使用身体运动和传感器仿真来构建,延伸,培训数据库,提高分类器精度,而无需进一步的实验活动。

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