openTSST – An open web platform for large-scale, video-based motion analysis during acute psychosocial stress

Richer R, Geßler T, Herzer L, Abel L, Küderle A, Rohleder N, Eskofier B (2023)


Publication Language: English

Publication Type: Conference contribution, Abstract of a poster

Publication year: 2023

Event location: MIT Media Lab, Boston, MA US

Abstract

We present openTSST, an open web platform to assess stress-related motion changes from video data with the goal to enable a more holistic stress assessment. Our proof-of-concept study shows that stress-induced changes in body posture and movements can reliably be measured using openTSST. With this work, we lay the groundwork for an ecological and large-scale analysis of human behavior during stress which can contribute to new findings in stress research.

Authors with CRIS profile

Additional Organisation(s)

Related research project(s)

How to cite

APA:

Richer, R., Geßler, T., Herzer, L., Abel, L., Küderle, A., Rohleder, N., & Eskofier, B. (2023, October). openTSST – An open web platform for large-scale, video-based motion analysis during acute psychosocial stress. Poster presentation at IEEE-EMBS International Conference on Body Sensor Networks: Sensor and Systems for Digital Health, MIT Media Lab, Boston, MA, US.

MLA:

Richer, Robert, et al. "openTSST – An open web platform for large-scale, video-based motion analysis during acute psychosocial stress." Presented at IEEE-EMBS International Conference on Body Sensor Networks: Sensor and Systems for Digital Health, MIT Media Lab, Boston, MA 2023.

BibTeX: Download