Detecting and differentiating leg bouncing behaviour from everyday movements using tri-axial accelerometer data

Hashini Senaratne, K. Ellis, S. Oviatt, Glenn Melvin
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引用次数: 2

Abstract

Leg bouncing is assumed to be related to anxiety, engrossment, boredom, excitement, fatigue, impatience, and disinterest. Objective detection of this behaviour would enable researching its relation to different mental and emotional states. However, differentiating this behaviour from other movements is less studied. Also, it is less known which sensor placements are best for such detection. We collected recordings of everyday movements, including leg bouncing, from six leg bouncers using tri-axial accelerometers at three leg positions. Using a Random Forest Classifier and data collected at the ankle, we could obtain a 90% accuracy in the classification of the recorded everyday movements. Further, we obtained a 94% accuracy in classifying four types of leg bouncing. Based on the subjects' opinion on leg bouncing patterns and experience with wearables, we discuss future research opportunities in this domain.
使用三轴加速度计数据检测和区分腿部弹跳行为与日常运动
跳腿被认为与焦虑、专注、无聊、兴奋、疲劳、不耐烦和不感兴趣有关。对这种行为的客观检测将有助于研究其与不同心理和情绪状态的关系。然而,将这种行为与其他动作区分开来的研究却很少。此外,我们还不太清楚哪种传感器位置最适合这种检测。我们收集了六个腿跳者的日常运动记录,包括腿跳,使用三轴加速度计在三个腿的位置。使用随机森林分类器和在脚踝处收集的数据,我们可以在记录的日常运动分类中获得90%的准确率。此外,我们在四种类型的腿部弹跳分类中获得了94%的准确率。根据受试者对腿弹跳模式的看法和使用可穿戴设备的经验,我们讨论了该领域未来的研究机会。
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