ActiPASS
The thigh-worn accelerometer data processing tool to find physical and sedentary behaviour
Install / Use
/learn @Ergo-Tools/ActiPASSREADME
ActiPASS
About ActiPASS
ActiPASS is a thigh-worn accelerometer data processing software which is developed by: Pasan Hettiarachchi and Peter J. Johansson at Occupational and Environmental Medicine, Department of Medical Sciences, Uppsala University. Lead: [Magnus Svartengren]
ActiPASS is based on: Acti4 thigh accelerometer activity detection algorithm developed by Jørgen Skotte at the National Research Centre for the Working Environment (NFA), Copenhagen, Denmark. Lead: [Andreas Holtermann]
The development of ActiPASS has partly been funded by ProPASS Consortium and FORTE, the Swedish Research Council for Health, Working Life and Welfare project 2021–01561.
ActiPASS may not be used for any commercial purposes without written permission from the developers. Please acknowledge the Developers and NFA as the source of the Software in any publications by referring to relevant publications about Acti4 /ActiPASS.
ActiPASS is made possible by these open source software and developers acknowledge all who contributed in various means.
Report your work
Please report any publications which implement ActiPASS here
ActiPASS graphical user interface
<figure> <img src="https://user-images.githubusercontent.com/26480941/230112571-0baca0d0-957a-4974-b3c9-58d21b1d4678.PNG" alt="ActiPASS GUI"> <figcaption>ActiPASS - a user friendly tool to process thigh-worn accelerometer data</figcaption> </figure>Download ActiPASS
Please contact developers via email to receive a compiled executable version of ActiPASS if you agree to the End-User License Agreement.
Links
Related Skills
node-connect
349.0kDiagnose OpenClaw node connection and pairing failures for Android, iOS, and macOS companion apps
frontend-design
109.4kCreate distinctive, production-grade frontend interfaces with high design quality. Use this skill when the user asks to build web components, pages, or applications. Generates creative, polished code that avoids generic AI aesthetics.
openai-whisper-api
349.0kTranscribe audio via OpenAI Audio Transcriptions API (Whisper).
qqbot-media
349.0kQQBot 富媒体收发能力。使用 <qqmedia> 标签,系统根据文件扩展名自动识别类型(图片/语音/视频/文件)。
