Understanding Human Daily Experience Through Continuous Sensing: ETRI Lifelog Dataset 2024
Se Won Oh, Hyuntae Jeong, Seungeun Chung, Jeong Mook Lim, Kyoung Ju Noh, Sunkyung Lee, Gyuwon Jung

TL;DR
The paper introduces the ETRI Lifelog Dataset 2024, a comprehensive collection of continuous sensor and self-report data capturing human daily behaviors, sleep, stress, and fatigue for advancing research in health and lifestyle analysis.
Contribution
This work presents a new, large-scale, multimodal lifelog dataset collected via passive sensors and surveys, enabling diverse research on human daily life and health patterns.
Findings
Dataset includes multi-day sensor and survey data
Potential for machine learning models to predict sleep quality and stress
Provides a publicly available resource for human lifestyle research
Abstract
Improving human health and well-being requires an accurate and effective understanding of an individual's physical and mental state throughout daily life. To support this goal, we utilized smartphones, smartwatches, and sleep sensors to collect data passively and continuously for 24 hours a day, with minimal interference to participants' usual behavior, enabling us to gather quantitative data on daily behaviors and sleep activities across multiple days. Additionally, we gathered subjective self-reports of participants' fatigue, stress, and sleep quality through surveys conducted immediately before and after sleep. This comprehensive lifelog dataset is expected to provide a foundational resource for exploring meaningful insights into human daily life and lifestyle patterns, and a portion of the data has been anonymized and made publicly available for further research. In this paper, we…
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