DigitalExposome: quantifying impact of urban environment on wellbeing using sensor fusion and deep learning.

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computational urban science Pub Date : 2023-01-01 DOI:10.1007/s43762-023-00088-9
Thomas Johnson, Eiman Kanjo, Kieran Woodward
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引用次数: 3

Abstract

The increasing level of air pollutants (e.g. particulates, noise and gases) within the atmosphere are impacting mental wellbeing. In this paper, we define the term 'DigitalExposome' as a conceptual framework that takes us closer towards understanding the relationship between environment, personal characteristics, behaviour and wellbeing using multimodal mobile sensing technology. Specifically, we simultaneously collected (for the first time) multi-sensor data including urban environmental factors (e.g. air pollution including: Particulate Matter (PM1), (PM2.5), (PM10), Oxidised, Reduced, Ammonia (NH3) and Noise, People Count in the vicinity), body reaction (physiological reactions including: EDA, HR, HRV, Body Temperature, BVP and movement) and individuals' perceived responses (e.g. self-reported valence) in urban settings. Our users followed a pre-specified urban path and collected the data using a comprehensive sensing edge device. The data is instantly fused, time-stamped and geo-tagged at the point of collection. A range of multivariate statistical analysis techniques have been applied including Principle Component Analysis, Regression and Spatial Visualisations to unravel the relationship between the variables. Results showed that Electrodermal Activity (EDA) and Heart Rate Variability (HRV) are noticeably impacted by the level of Particulate Matter in the environment. Furthermore, we adopted Convolutional Neural Network (CNN) to classify self-reported wellbeing from the multimodal dataset which achieved an f1-score of 0.76.

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DigitalExposome:利用传感器融合和深度学习量化城市环境对幸福感的影响。
大气中不断增加的空气污染物(如微粒、噪音和气体)正在影响心理健康。在本文中,我们将术语“DigitalExposome”定义为一个概念框架,它使我们更接近于使用多模态移动传感技术来理解环境、个人特征、行为和健康之间的关系。具体而言,我们首次同时收集了包括城市环境因素(如空气污染,包括:颗粒物(PM1)、(PM2.5)、(PM10)、氧化、还原、氨(NH3)和噪音、附近人口数量)、身体反应(生理反应,包括:EDA、HR、HRV、体温、BVP和运动)和个人感知反应(如自我报告价)在内的多传感器数据。我们的用户遵循预先指定的城市路径,并使用综合传感边缘设备收集数据。这些数据在收集时立即融合,并带有时间戳和地理标记。应用了一系列多元统计分析技术,包括主成分分析、回归和空间可视化来揭示变量之间的关系。结果表明,皮肤电活动(EDA)和心率变异性(HRV)明显受到环境中颗粒物水平的影响。此外,我们采用卷积神经网络(CNN)从多模态数据集中对自我报告的幸福感进行分类,其f1得分为0.76。
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