Abstract

Wrist-worn sensors have better compliance for activity monitoring compared to hip, waist, ankle or chest positions. However, wrist-worn activity monitoring is challenging due to the wide degree of freedom for the hand movements, as well as similarity of hand movements in different activities such as varying intensities of cycling. To strengthen the ability of wrist-worn sensors in detecting human activities more accurately, motion signals can be complemented by physiological signals such as optical heart rate (HR) based on photoplethysmography. In this paper, an activity monitoring framework using an optical HR sensor and a triaxial wrist-worn accelerometer is presented. We investigated a range of daily life activities including sitting, standing, household activities and stationary cycling with two intensities. A random forest (RF) classifier was exploited to detect these activities based on the wrist motions and optical HR. The highest overall accuracy of 89.6 ± 3.9% was achieved with a forest of a size of 64 trees and 13-s signal segments with 90% overlap. Removing the HR-derived features decreased the classification accuracy of high-intensity cycling by almost 7%, but did not affect the classification accuracies of other activities. A feature reduction utilizing the feature importance scores of RF was also carried out and resulted in a shrunken feature set of only 21 features. The overall accuracy of the classification utilizing the shrunken feature set was 89.4 ± 4.2%, which is almost equivalent to the above-mentioned peak overall accuracy.

Highlights

  • Activity monitoring and detection is essential, e.g., in designing context-aware environments and physical therapies

  • We report the effect of window length, number of trees in the random forest (RF), effect of heart rate (HR) features, the optimal number of features and the most important HR and ACC features

  • An activity recognition framework deploying a single wrist-worn optical HR monitoring and triaxial accelerometer was presented in this paper

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Summary

Introduction

Activity monitoring and detection is essential, e.g., in designing context-aware environments and physical therapies. Quantification of the intensity and type of the physical activities helps with understanding the individual’s lifestyle and facilitating the process of behavior change [1]. Lack of sufficient physical activity is directly related to higher risk of stress, cardiovascular disorders, diabetes and musculoskeletal disorders [2]. In the case of elderly adults, activity monitoring can play a key role in detection of long inactive time periods or fall events [3]. Inability to recover from a fall can lead. Sensors 2018, 18, 613 to debilitation and even fatal outcomes [4]. Real-time activity recognition systems that are sensitive enough in detecting such critical time points are required [5]

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