Skip to content

cruiseresearchgroup/InGauge-and-EnGage-Datasets

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

10 Commits
 
 
 
 

Repository files navigation

Update

14 May 2021: We added the codes for preprocessing the En-Gage dataset.

13 May 2021: We published the In-Gauge and En-Gage datasets on Figshare.

Dataset Introduction

We conducted a field study at a K-12 private school in the suburbs of Melbourne, Australia. The full datasets (download) contain two elements.

First, a 5-month longitudinal field study In-Gauge using two outdoor weather stations, as well as indoor weather stations in 17 classrooms and temperature sensors on the vents of occupant-controlled room air-conditioners; these were collated into individual datasets for each classroom at a 5-minute logging frequency, including additional data on occupant presence. The dataset was used to derive predictive models of how occupants operate room air-conditioning units.

Second, we tracked 23 students and 6 teachers in a 4-week cross-sectional study En-Gage, using wearable sensors to log physiological data, as well as daily surveys to query the occupants' thermal comfort, learning engagement, emotions and seating behaviours. For privacy concerns, we removed data that may reveal participants' identities. This is the first publicly available dataset studying the daily behaviours and engagement of high school students using heterogeneous methods. The combined data could be used to analyse the relationships between indoor climates and mental states of school students.

Citation

Please cite the following papers if the dataset is used in a publication:

[1] Gao, N., Marschall, M., Burry, J., Watkins, S., & Salim, F. D. (2021) Understanding Occupants’ Behaviour, Engagement, Emotion, and Comfort Indoors with Heterogeneous Sensors and Wearables. arxiv.org, https://arxiv.org/abs/2105.06637v1.

[2] Gao, N., Shao, W., Rahaman, M. S., & Salim, F. D. (2020). n-Gage: Predicting in-class Emotional, Behavioural and Cognitive Engagement in the Wild. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 4(3), 1-26.

About

The codes for preprocessing the En-Gage dataset

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published