Litcius/Paper detail

CAPTURE-24: A large dataset of wrist-worn activity tracker data collected in the wild for human activity recognition

Shing Chan, Hang Yuan, Catherine Tong, Aidan Acquah, Abram Schönfeldt, Jonathan Gershuny, Aiden Doherty

2024Scientific Data42 citationsDOIOpen Access PDF

Abstract

Existing activity tracker datasets for human activity recognition are typically obtained by having participants perform predefined activities in an enclosed environment under supervision. This results in small datasets with a limited number of activities and heterogeneity, lacking the mixed and nuanced movements normally found in free-living scenarios. As such, models trained on laboratory-style datasets may not generalise out of sample. To address this problem, we introduce a new dataset involving wrist-worn accelerometers, wearable cameras, and sleep diaries, enabling data collection for over 24 hours in a free-living setting. The result is CAPTURE-24, a large activity tracker dataset collected in the wild from 151 participants, amounting to 3883 hours of accelerometer data, of which 2562 hours are annotated. CAPTURE-24 is two to three orders of magnitude larger than existing publicly available datasets, which is critical to developing accurate human activity recognition models.

Topics & Concepts

Activity recognitionAccelerometerComputer scienceWearable computerArtificial intelligenceAutomatic identification and data captureWearable technologyMachine learningPattern recognition (psychology)Data miningSpeech recognitionEmbedded systemOperating systemContext-Aware Activity Recognition SystemsPhysical Activity and HealthMobile Health and mHealth Applications
CAPTURE-24: A large dataset of wrist-worn activity tracker data collected in the wild for human activity recognition | Litcius