BioMediTech Institute and Faculty of Biomedical Sciences and Engineering, Tampere University ofTechnology.
Department of Future Technologies, University of Turku,.
Sensors (Basel). 2018 Feb 22;18(2):613. doi: 10.3390/s18020613.
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.
腕戴式传感器在活动监测方面比髋部、腰部、脚踝或胸部位置的传感器具有更好的顺应性。然而,由于手部运动的自由度很大,以及不同活动(如不同强度的骑行)中手部运动的相似性,腕戴式活动监测具有挑战性。为了增强腕戴式传感器更准确地检测人体活动的能力,可以通过光学心率(HR)等生理信号来补充运动信号,光学 HR 基于光体积描记法。在本文中,提出了一种使用光学 HR 传感器和三轴腕戴式加速度计的活动监测框架。我们研究了一系列日常生活活动,包括坐姿、站立、家务活动和以两种强度进行的固定自行车运动。利用随机森林(RF)分类器基于手腕运动和光学 HR 来检测这些活动。使用大小为 64 棵树和 90%重叠的 13 秒信号段的森林,实现了 89.6±3.9%的总体最高准确性。去除 HR 衍生特征会使高强度骑行的分类准确性降低近 7%,但不会影响其他活动的分类准确性。还利用 RF 的特征重要性得分进行了特征降维,得到了仅包含 21 个特征的缩小特征集。使用缩小特征集的分类总体准确性为 89.4±4.2%,几乎与上述最高总体准确性相当。