Towards the automatic data annotation for human activity recognition based on wearables and BLE beacons

Florenc Demrozi, Marin Jereghi, G. Pravadelli
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引用次数: 3

Abstract

In machine learning, the data annotation process is an essential, but error-prone and time-consuming manual activity, which associates metadata to the samples of a dataset. In the context of Human Activity Recognition (HAR) this generally reflects in a human watching the video recordings of the activities carried out by the target user to assign a label to each video frame. The label can refer, for example, to the nature of the performed activity, or to the time series collected through sensors worn by the user or present in the environment. This paper deals with the automation of the data annotation process in the HAR context by presenting a methodology that (i) maps Bluetooth Low Energy (BLE) beacons distributed in the environment to the locations where a human typically performs activities like eating, cooking, working, and resting, and (ii) associates the data collected by sensors embedded in the smartwatch worn by the user (i.e., acceleration, angular velocity, and magnetometer) to the nearest BLE beacon. In this way, data gathered through the smartwatch are automatically annotated with the human activity associated to the nearest beacon.
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基于可穿戴设备和BLE信标的人体活动识别数据自动标注
在机器学习中,数据注释过程是必不可少的,但容易出错且耗时的手动活动,它将元数据与数据集的样本关联起来。在人类活动识别(HAR)的背景下,这通常反映在人类观看目标用户所进行的活动的视频记录中,为每个视频帧分配一个标签。例如,标签可以指所执行活动的性质,或者指通过用户佩戴的传感器或环境中存在的传感器收集的时间序列。本文通过提出一种方法(i)将环境中分布的蓝牙低功耗(BLE)信标映射到人类通常进行进食、烹饪、工作和休息等活动的位置,以及(ii)将用户佩戴的智能手表中嵌入的传感器收集的数据(即加速度、角速度和磁力计)关联到最近的BLE信标,从而处理HAR环境中数据注释过程的自动化。通过这种方式,通过智能手表收集的数据会自动标注与最近的信标相关的人类活动。
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