基于可穿戴惯性传感器的食物和饮料摄入识别分层方法

Dario Ortega Anderez, Ahmad Lotfi, C. Langensiepen
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引用次数: 14

摘要

尽管惯性传感器在人体活动识别(HAR)中的应用越来越受到关注,但其研究主要集中在准周期性活动(如步行或跑步)的健身应用上。相反,像吃或喝这样的活动不能被认为是周期性的或准周期性的。相反,它们是由连续数据流中零星发生的手势组成的。本文提出了一种用于环境辅助生活(AAL)环境的手势识别方法。具体来说,研究了食物和饮料的摄入姿势。为此,首先,使用腰戴式三轴加速度计数据来开发一个低计算模型,以识别一个人是处于移动、坐着还是站着的状态。有了这些信息,来自手腕上的三轴微机电(MEM)系统的数据被用来识别一组相似的饮食手势。初步结果表明,在减少的四维特征向量上使用低计算模型,可以以100%的分类准确率识别状态。此外,饮食手势的识别率达到99%以上。综上所述,有可能开发一种基于双节惯性单元的连续监测系统。这项工作是一个更大项目的一部分,该项目旨在为独立生活的老年人开发一种自我忽视检测连续监测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hierarchical Approach in Food and Drink Intake Recognition Using Wearable Inertial Sensors
Despite the increasing attention given to inertial sensors for Human Activity Recognition (HAR), efforts are principally focused on fitness applications where quasi-periodic activities like walking or running are studied. In contrast, activities like eating or drinking cannot be considered periodic or quasi-periodic. Instead, they are composed of sporadic occurring gestures in continuous data streams. This paper presents an approach to gesture recognition for an Ambient Assisted Living (AAL) environment. Specifically, food and drink intake gestures are studied. To do so, firstly, waist-worn tri-axial accelerometer data is used to develop a low computational model to recognize whether a person is at moving, sitting or standing estate. With this information, data from a wrist-worn tri-axial Micro-Electro-Mechanical (MEM) system was used to recognize a set of similar eating and drinking gestures. The promising preliminary results show that states can be recognized with 100% classification accuracy with the use of a low computational model on a reduced 4-dimensional feature vector. Additionally, the recognition rate achieved for eating and drinking gestures was above 99%. Altogether suggests that it is possible to develop a continuous monitoring system based on a bi-nodal inertial unit. This work is part of a bigger project that aims at developing a self-neglect detection continuous monitoring system for older adults living independently.
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