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Scenario-Controlled Synthetic Data Augmentation: In Application of Agitation Monitoring

Ali Najem, Jan Kleine Deters, Mehdi Sedighi, Heinrich Wörtche

Onderzoeksoutput: ChapterAcademic

Samenvatting

Reinforcement learning offers a promising approach for personalized, early-stage detection of behavioral events such as agitation in individuals with dementia, particularly when contextual insights from care staff are integrated. Given the scarcity and the ethical constraints of real-world agitation data, training an early-stage detection model in such an approach can be done using synthetic data, by training models with variational simulated scenarios. Therefore, we propose a proof-of-concept scenario-controlled synthetic data augmentation pipeline. The pipeline is designed to translate textual scenario descriptions into synthetic sensor data, using text to structure translations, activity classification, features extraction, and generative models. The system is trained with multimodal sensor data including accelerometer, blood volume pulse, electrodermal activity, and skin temperature. The system makes use of an activity classification model, trained with the Capture-24 dataset by making use of the accelerometer data, to define the scenario conditions for the generative models. The system effectively generated synthetic data for accelerometer signals, while the remaining three sensors require further improvement. Future work will explore sensor-semantic and human-semantic representation alignment, sensor specific temporal modeling, causal feature learning and improved high-level control. This will enable training models with human feedback to achieve early-stage detection of agitation.
Originele taal-2English
TitelSensor-Based Activity Recognition and Artificial Intelligence
Subtitel10th International Workshop, iWOAR 2025, Enschede, The Netherlands, September 18–19, 2025, Proceedings
UitgeverijSpringer Nature
Pagina's196-221
Volume16292
ISBN van elektronische versie978-3-032-13312-0
ISBN van geprinte versie978-3-032-13311-3
DOI's
StatusPublished - 2 jan. 2026
EvenementiWOAR 2025 - 10th international Workshop on Sensor-Based Activity Recognition and Artificial Intelligence - University of Twente, Enschede, Netherlands, Netherlands
Duur: 18 sep. 202519 sep. 2025
https://iwoar.org/2025/index.html

Publicatie series

ReeksLecture Notes in Computer Science
Volume16292
ISSN0302-9743

Conference

ConferenceiWOAR 2025 - 10th international Workshop on Sensor-Based Activity Recognition and Artificial Intelligence
Land/RegioNetherlands
StadEnschede, Netherlands
Periode18/09/2519/09/25
Internet adres

Keywords

  • dementie
  • onrust
  • simulatie
  • synthetische gegevens
  • voorwaardelijke generatieve modellering

Research Focus Areas Hanze University of Applied Sciences

  • Healthy Ageing

Research Focus Areas Research Centre or Centre of Expertise

  • Artificial Intelligence
  • Cyberfysical systems

Publinova thema's

  • ICT & Media
  • Techniek
  • Gezondheid

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