2023
DOI: 10.3390/s23198244
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PhysioKit: An Open-Source, Low-Cost Physiological Computing Toolkit for Single- and Multi-User Studies

Jitesh Joshi,
Katherine Wang,
Youngjun Cho

Abstract: The proliferation of physiological sensors opens new opportunities to explore interactions, conduct experiments and evaluate the user experience with continuous monitoring of bodily functions. Commercial devices, however, can be costly or limit access to raw waveform data, while low-cost sensors are efforts-intensive to setup. To address these challenges, we introduce PhysioKit, an open-source, low-cost physiological computing toolkit. PhysioKit provides a one-stop pipeline consisting of (i) a sensing and data… Show more

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Cited by 2 publications
(7 citation statements)
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“…All participants reported having no known health conditions, provided informed consent ahead of the study, and were compensated for their time following the study. Detailed demographic information of study participants is provided in the Table A5 in Appendix D. After being welcomed and briefed, participants were asked to remove any bulky clothing (e.g., winter coats, jackets) and seated comfortably in front of a 65-by-37-inch screen, where they were fitted with PhysioKit [20] sensors. The PPG sensor was attached to participants' left or right ear with a metal clip.…”
Section: Participantsmentioning
confidence: 99%
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“…All participants reported having no known health conditions, provided informed consent ahead of the study, and were compensated for their time following the study. Detailed demographic information of study participants is provided in the Table A5 in Appendix D. After being welcomed and briefed, participants were asked to remove any bulky clothing (e.g., winter coats, jackets) and seated comfortably in front of a 65-by-37-inch screen, where they were fitted with PhysioKit [20] sensors. The PPG sensor was attached to participants' left or right ear with a metal clip.…”
Section: Participantsmentioning
confidence: 99%
“…Customized software was developed using C++ programming language, which utilized the FLIR-provided Spinnaker library (https://www.flir.co.uk/products/spinnaker-sdk/, accessed on 7 November 2022) to acquire thermal infrared frames, while using OpenCV library functions to acquire RGB frames. The PhysioKit toolkit [20] was adapted to acquire the ground-truth PPG signals in synchronization with RGB and thermal frames. Implementation was adapted such that RGB frames, thermal frames, and PPG signal were acquired in separate and dedicated threads, while sharing a common onset trigger and a timer to stop the acquisition in a synchronized manner.…”
Section: Data Acquisitionmentioning
confidence: 99%
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