Reducing Annotation Burden in Physical Activity Research Using Vision-Language Models
Abram Schonfeldt, Benjamin Maylor, Xiaofang Chen, Ronald Clark, Aiden, Doherty

TL;DR
This study evaluates vision-language models for automatically annotating physical activity from wearable camera images, aiming to reduce manual labeling effort in health research.
Contribution
It demonstrates that open-source vision-language models can effectively classify sedentary behavior, offering a scalable alternative to labor-intensive manual annotation.
Findings
Best models achieved median F1-scores of 0.89 for sedentary activity.
Performance declined for higher activity intensities and across different populations.
Models showed potential for reducing annotation burden in similar demographic settings.
Abstract
Introduction: Data from wearable devices collected in free-living settings, and labelled with physical activity behaviours compatible with health research, are essential for both validating existing wearable-based measurement approaches and developing novel machine learning approaches. One common way of obtaining these labels relies on laborious annotation of sequences of images captured by cameras worn by participants through the course of a day. Methods: We compare the performance of three vision language models and two discriminative models on two free-living validation studies with 161 and 111 participants, collected in Oxfordshire, United Kingdom and Sichuan, China, respectively, using the Autographer (OMG Life, defunct) wearable camera. Results: We found that the best open-source vision-language model (VLM) and fine-tuned discriminative model (DM) achieved comparable performance…
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Taxonomy
TopicsMobile Health and mHealth Applications · Health Literacy and Information Accessibility
