论文标题

魅力:使用运动传感器对复杂人类活动分类的分层深度学习模型

CHARM: A Hierarchical Deep Learning Model for Classification of Complex Human Activities Using Motion Sensors

论文作者

Rosen, Eric, Senkal, Doruk

论文摘要

在本文中,我们报告了使用运动传感器对复杂人类活动分类的分层深度学习模型。与用于基于事件的活动识别的传统人类活动识别(HAR)模型相反,例如步骤计数,跌倒检测和手势识别,我们称为魅力(复杂的人类活动识别模型)的这种新的深度学习模型,旨在识别高级人类活动,这些活动由多个不同的低级活动组成,包括多个不同的低水平活动,例如每日的餐厅,例如餐厅和内部的餐厅,例如内部的餐厅和餐厅。魅力不仅在定量上优于最先进的监督学习方法,从平均准确性和F1得分方面进行高级活动识别,而且自动学习识别低级活动,例如操纵手势和运动模式,而没有任何明确的标签。这为使用可穿戴传感器打开了人机相互作用(HMI)方式的新途径,用户可以选择将自动化任务与高级活动相关联,例如控制家庭自动化(例如,机器人真空吸尘器,灯光和恒温器)或在正确的时间上呈现上下文的信息(例如,适时的时间)(例如,适时的时间)(例如,更新,更新及其状态)。此外,仅使用高级活动标签培训培训时学习低级用户活动的能力可能会为半监督的学习HAR任务提供本质上难以贴标签的方式。

In this paper, we report a hierarchical deep learning model for classification of complex human activities using motion sensors. In contrast to traditional Human Activity Recognition (HAR) models used for event-based activity recognition, such as step counting, fall detection, and gesture identification, this new deep learning model, which we refer to as CHARM (Complex Human Activity Recognition Model), is aimed for recognition of high-level human activities that are composed of multiple different low-level activities in a non-deterministic sequence, such as meal preparation, house chores, and daily routines. CHARM not only quantitatively outperforms state-of-the-art supervised learning approaches for high-level activity recognition in terms of average accuracy and F1 scores, but also automatically learns to recognize low-level activities, such as manipulation gestures and locomotion modes, without any explicit labels for such activities. This opens new avenues for Human-Machine Interaction (HMI) modalities using wearable sensors, where the user can choose to associate an automated task with a high-level activity, such as controlling home automation (e.g., robotic vacuum cleaners, lights, and thermostats) or presenting contextually relevant information at the right time (e.g., reminders, status updates, and weather/news reports). In addition, the ability to learn low-level user activities when trained using only high-level activity labels may pave the way to semi-supervised learning of HAR tasks that are inherently difficult to label.

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