AeroSense: Sensing Aerosol Emissions from Indoor Human Activities

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Pub Date : 2024-05-13 DOI:10.1145/3659593
Bhawana Chhaglani, Camellia Zakaria, Richard Peltier, Jeremy Gummeson, Prashant J. Shenoy
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Abstract

The types of human activities occupants are engaged in within indoor spaces significantly contribute to the spread of airborne diseases through emitting aerosol particles. Today, ubiquitous computing technologies can inform users of common atmosphere pollutants for indoor air quality. However, they remain uninformed of the rate of aerosol generated directly from human respiratory activities, a fundamental parameter impacting the risk of airborne transmission. In this paper, we present AeroSense, a novel privacy-preserving approach using audio sensing to accurately predict the rate of aerosol generated from detecting the kinds of human respiratory activities and determining the loudness of these activities. Our system adopts a privacy-first as a key design choice; thus, it only extracts audio features that cannot be reconstructed into human audible signals using two omnidirectional microphone arrays. We employ a combination of binary classifiers using the Random Forest algorithm to detect simultaneous occurrences of activities with an average recall of 85%. It determines the level of all detected activities by estimating the distance between the microphone and the activity source. This level estimation technique yields an average of 7.74% error. Additionally, we developed a lightweight mask detection classifier to detect mask-wearing, which yields a recall score of 75%. These intermediary outputs are critical predictors needed for AeroSense to estimate the amounts of aerosol generated from an active human source. Our model to predict aerosol is a Random Forest regression model, which yields 2.34 MSE and 0.73 r2 value. We demonstrate the accuracy of AeroSense by validating our results in a cleanroom setup and using advanced microbiological technology. We present results on the efficacy of AeroSense in natural settings through controlled and in-the-wild experiments. The ability to estimate aerosol emissions from detected human activities is part of a more extensive indoor air system integration, which can capture the rate of aerosol dissipation and inform users of airborne transmission risks in real time.
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AeroSense:感知室内人类活动的气溶胶排放
居住者在室内空间所从事的人类活动类型会通过释放气溶胶粒子,在很大程度上导致空气传播疾病。如今,无所不在的计算技术可以告知用户有关室内空气质量的常见大气污染物。然而,他们仍然无法获知人类呼吸活动直接产生的气溶胶的比率,而这是影响空气传播风险的一个基本参数。在本文中,我们介绍了 AeroSense,这是一种新型的隐私保护方法,它利用音频传感技术,通过检测人类呼吸活动的种类和确定这些活动的响度来准确预测气溶胶的产生率。我们的系统将隐私优先作为关键的设计选择;因此,它只提取无法通过两个全向麦克风阵列重构为人类可听信号的音频特征。我们采用随机森林算法的二元分类器组合来检测同时发生的活动,平均召回率为 85%。它通过估计麦克风与活动源之间的距离来确定所有检测到的活动的级别。这种水平估计技术产生的平均误差为 7.74%。此外,我们还开发了一个轻量级面具检测分类器来检测戴面具的情况,其召回率为 75%。这些中间输出是 AeroSense 估算活动人源产生的气溶胶量所需的关键预测因子。我们预测气溶胶的模型是随机森林回归模型,其MSE值为2.34,r2值为0.73。我们在洁净室设置中使用先进的微生物技术验证了我们的结果,从而证明了 AeroSense 的准确性。我们通过受控实验和野外实验展示了 AeroSense 在自然环境中的功效。估算检测到的人类活动产生的气溶胶排放量的能力是更广泛的室内空气系统集成的一部分,它可以捕捉气溶胶的消散速度,并实时告知用户空气传播风险。
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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
自引率
0.00%
发文量
154
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