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Machine Learning Based Human Activity Detection in a Privacy-Aware Compliance Tracking System

机译:隐私感知合规跟踪系统中基于机器学习的人类活动检测

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In this paper, we report our work on using machine learning techniques to predict back bending activity based on field data acquired in a local nursing home. The data are recorded by a privacy-aware compliance tracking system (PACTS). The objective of PACTS is to detect back-bending activities and issue real-time alerts to the participant when she bends her back excessively, which we hope could help the participant form good habits of using proper body mechanics when performing lifting/pulling tasks. We show that our algorithms can differentiate nursing staffs baseline and high-level bending activities by using human skeleton data without any expert rules.
机译:在本文中,我们报告了我们使用机器学习技术基于在当地养老院中获得的现场数据来预测背部弯曲活动的工作。数据由隐私感知法规遵从跟踪系统(PACTS)记录。 PACTS的目的是检测弯曲的活动并在参与者过度向后弯曲时向参与者发出实时警报,我们希望这可以帮助参与者养成在执行提拉/牵引任务时使用适当的身体力学的良好习惯。我们证明了我们的算法可以通过使用人体骨骼数据而无需任何专家规则来区分护理人员的基线和高级弯曲活动。

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