基于心理健康社交机器人的深呼吸阶段分类

Kayla Matheus, Ellie Mamantov, Marynel Vázquez, Brian Scassellati
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引用次数: 0

摘要

社交机器人通过支持参与行为干预,在帮助心理健康方面处于独特的地位。其中一种行为干预是练习深呼吸,这已被证明可以从生理上减轻焦虑症状。最近已经开发出多种支持深呼吸的机器人,但还没有一种方法可以检测个人练习的准确性。检测呼吸阶段(即吸气、屏气或呼气)对这些机器人来说是一个挑战,因为机器人经常被用户操纵或移动,或者机器人本身正在移动以产生触觉反馈。因此,我们首先提出了OMMDB:一个新颖的、多模态的公共数据集,由在机器人自我运动的多种条件下使用Ommie机器人进行深呼吸的个体组成。该数据集包括RGB视频、惯性传感器数据和电机编码器数据,以及来自呼吸带的地面真实呼吸数据。我们的第二个贡献是使用OMMDB训练的卷积长短期记忆神经网络的实验结果。这些结果表明,该系统可以应用于深呼吸领域,并在个体用户之间进行推广。我们还表明,我们的模型能够推广到多种类型的机器人自我运动,减少了为不同的人机交互条件训练单个模型的需要。
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Deep Breathing Phase Classification with a Social Robot for Mental Health
Social robots are in a unique position to aid mental health by supporting engagement with behavioral interventions. One such behavioral intervention is the practice of deep breathing, which has been shown to physiologically reduce symptoms of anxiety. Multiple robots have been recently developed that support deep breathing, but none yet implement a method to detect how accurately an individual is performing the practice. Detecting breathing phases (i.e., inhaling, breath holding, or exhaling) is a challenge with these robots since often the robot is being manipulated or moved by the user, or the robot itself is moving to generate haptic feedback. Accordingly, we first present OMMDB: a novel, multimodal, public dataset made up of individuals performing deep breathing with an Ommie robot in multiple conditions of robot ego-motion. The dataset includes RGB video, inertial sensor data, and motor encoder data, as well as ground truth breathing data from a respiration belt. Our second contribution features experimental results with a convolutional long-short term memory neural network trained using OMMDB. These results show the system’s ability to be applied to the domain of deep breathing and generalize between individual users. We additionally show that our model is able to generalize across multiple types of robot ego-motion, reducing the need to train individual models for varying human-robot interaction conditions.
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